CN112924007A - Weight measurement method based on target sleep - Google Patents

Weight measurement method based on target sleep Download PDF

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CN112924007A
CN112924007A CN202110074124.4A CN202110074124A CN112924007A CN 112924007 A CN112924007 A CN 112924007A CN 202110074124 A CN202110074124 A CN 202110074124A CN 112924007 A CN112924007 A CN 112924007A
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weight
steady state
sleep
time
measurement
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CN112924007B (en
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丁英锋
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Chongqing Huohoucao Technology Co ltd
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Chongqing Huohoucao Technology Co ltd
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    • GPHYSICS
    • G01MEASURING; TESTING
    • G01GWEIGHING
    • G01G19/00Weighing apparatus or methods adapted for special purposes not provided for in the preceding groups
    • G01G19/44Weighing apparatus or methods adapted for special purposes not provided for in the preceding groups for weighing persons
    • GPHYSICS
    • G01MEASURING; TESTING
    • G01GWEIGHING
    • G01G19/00Weighing apparatus or methods adapted for special purposes not provided for in the preceding groups
    • G01G19/44Weighing apparatus or methods adapted for special purposes not provided for in the preceding groups for weighing persons
    • G01G19/445Weighing apparatus or methods adapted for special purposes not provided for in the preceding groups for weighing persons in a horizontal position
    • GPHYSICS
    • G01MEASURING; TESTING
    • G01GWEIGHING
    • G01G19/00Weighing apparatus or methods adapted for special purposes not provided for in the preceding groups
    • G01G19/52Weighing apparatus combined with other objects, e.g. furniture

Abstract

The invention discloses a weight measuring method based on target sleep, which is characterized in that a plurality of pressure sensors are arranged under a bed, and the duration of a measuring time interval is determined; and after a measuring time interval is finished, selecting one-time sleep as target sleep, and calculating the time interval weight of the user in the measuring time interval by using the steady state weight value of a certain steady state or a plurality of steady states in the target sleep. According to the invention, the steady state with low reliability is removed by selecting the target sleep method, and the selection range of the steady state is narrowed, so that the steady state with high reliability can be extracted, and further the weight value capable of representing the actual weight of the user is obtained, and accurate weight data is provided for basic health monitoring.

Description

Weight measurement method based on target sleep
Technical Field
The invention relates to the field of basic health monitoring, in particular to a weight measurement method based on target sleep.
Background
The accuracy of a conventional electronic scale is generally 0.1kg, at which the reading is relatively easy to stabilize, and once stabilized, the electronic scale outputs the reading to a display screen as if only one value is read. In fact, the readings obtained by weighing the body weight using any electronic weighing device are a sequence and not a single value. Since basic health monitoring needs to acquire high-precision weight data of a user so as to analyze and monitor health status, generally, a high-precision pressure sensor with the weight below 10g is used, measurement of the pressure sensor is a dynamic process, as long as certain precision is achieved, slight disturbance can generate reading difference, and if measurement is performed once per second, different readings can be generated per second, so that the weight data is difficult to stabilize, for example, the length of time of the user in a bed is 8 hours, that is, the length of time of 8 × 60 × 60 is 28800 seconds, and 28800 weighing readings can be generated; it is difficult to determine which weighing data can more accurately reflect the actual weight of the user.
Additionally, the actions of the person in bed, such as: the reading of the pressure sensor is influenced when people get on the bed, get off the bed, turn over and the like, and large instantaneous fluctuation occurs; some behavioral habits of the user, such as whether to take the mobile phone, glasses, bedding, clothes and the like up and down, can also disturb the reading. If these effects are not eliminated, the measured weight values are distorted significantly.
Disclosure of Invention
The invention aims to provide a weight measurement method based on target sleep.
The technical scheme of the invention is as follows:
a method of weight measurement based on target sleep comprising the steps of:
step S1, a plurality of pressure sensors are provided under the bed, and each pressure sensor is spaced by a first preset time T. Testing primary pressure, converting the pressure into weight, defining a total reading A to represent the sum of the reading values of all pressure sensors, and predefining an empty bed reading B to represent the total reading in an empty bed state; defining the instantaneous body weight W-A-B measured at each measurement moment;
step S2, determining the duration of a measuring period, and determining the reference weight W of the user in the measuring periodr
Step S3, after a measuring time interval is finished, judging whether a main sleep exists in the measuring time interval, wherein the main sleep judging method is to preset a main sleep time threshold value, and judging the sleep with the total sleep time length being more than or equal to the main sleep time threshold value as the main sleep, if so, executing the step S4, otherwise, executing the step S5;
step S4, selecting one-time main sleep as target sleep, and executing step S6;
step S5, selecting the sleep with the longest steady state duration in the measurement period as the target sleep, and executing step S6;
step S6, defining steady state body weight WCRepresenting the weight value of the user during steady state, defining the weight W of the user during a period of timeZRepresenting the body weight value measured by the user during a measurement period, using the steady state body weight W of a certain steady state or a plurality of steady states in the target sleepCThe value of (A) calculates the weight W of the user during the measurement periodZ
Further, a time threshold for getting on and off the bed is set in advance, and if the user gets out of the bed during sleep but gets on the bed again within the time threshold for getting on and off the bed, the user counts one sleep before and after.
Further, when the time of leaving the bed of the user in a measurement period is smaller than the time threshold of getting on or off the bed, the steady state time length is taken as the sleep time length to judge the main sleep and the target sleep, and the values of the main sleep time threshold and the time threshold of getting on or off the bed are reduced.
Further, for the sleep spanning two measurement periods, when calculating the sleep time length, the sleep is divided into a front part and a rear part according to the measurement period, if the time length of the front part is more than that of the rear part, the sleep is counted into the statistics of the front measurement period, and if the time length of the front part is less than or equal to that of the rear part, the sleep is counted into the statistics of the rear measurement period.
Further, after the target sleep is selected, if the target sleep comprises multiple stages of steady states, all the steady states in the target sleep are ranked from high to low according to the confidence level C, and the steady state weight W of the stage of steady state with the highest confidence level C is selectedCAs the user's weight W during the last measurement periodZAnd a reference weight W for the current measurement periodr(ii) a Or calculating the steady state weight W of the first several steady states ranked by the confidence CCAs the user's weight W during the last measurement periodZAnd a reference weight W for the current measurement periodr
Further, determining the steady state body weight WCThe method comprises the following steps:
step S101, judging whether the measuring time is in an empty bed state or not according to the value of the weight W after each measurement, and returning to continue to execute the step S101 if the measuring time is in the empty bed state; if the bed is in the state, executing step S102;
step S102, defining the starting time as a certain measuring time of the pressure sensor and the length as uT0The time period of (1) is a long time window, wherein u is a natural number, whether the instantaneous weight W in the long time window with the current measurement time as the end time is in a stable state or not is judged, if the instantaneous weight W in the long time window is in the stable state, the current state is judged to be in the stable state, and the step S103 is executed, otherwise, the step S101 is executed;
step S103, judging whether the steady state is finished or not, and executing step S104 if the steady state is finished; otherwise, returning to continue executing step S103;
step S104, determining the steady state weight W of the user in the steady state period according to the value of the instantaneous weight W measured at a certain measuring time or a plurality of measuring times in the steady state periodC
Further, in step S102, the method of determining whether the instantaneous weight W is in a stable state for a long time window includes: defining the standard deviation of all instantaneous weight W values recorded over a long time window as σTWCSetting a long steady state standard deviation threshold delta1When a long time window ends, if σ of the long time windowTWC≤δ1Judging that the instantaneous weight W in the long time window is in a stable state; if σTWC>δ1Then, the instantaneous weight W in the long time window is determined to be in an unstable state.
Further, a confidence level for each steady state is calculated at the end of the steady state, wherein the confidence level for the steady state is indicative of the steady state body weight W measured in the steady stateCThe confidence level of (C) is recorded as a steady-state confidence level C; after the end of the measurement period, determining the weight W of the user during the measurement periodZThe method comprises ranking the steady states in the measurement period according to the confidence of the steady state, and taking the weight W of one or more steady states during the steady state according to the rankingCDetermining the weight W of the user during the measurement periodZ
Further, the method for calculating the steady-state confidence coefficient C includes: defining a reference weight confidence CrShows the steady state body weight W according to the steady stateCAnd a reference body weight WrThe smaller the difference is, the reference weight confidence CrThe higher; defining an eccentricity confidence CbRepresenting the confidence coefficient obtained by the eccentricity of the stress action point of the total load of the user after getting on the bed, deviating from the geometric center of the bed, wherein the smaller the eccentricity is, the higher the eccentricity confidence coefficient C isbThe higher; defining a steady state duration confidence ChRepresenting the confidence coefficient obtained from the steady state duration, the longer the steady state duration, the confidence coefficient C of the steady state durationhThe higher; use of Cr、Cb、Ch、Cr×Ch、Cr×Cb、Cb×ChOr Cr×Cb×ChAs the steady state confidence C.
Further, in the step S2, the reference weight W of the user in the measurement period is determinedrThe method comprises the following steps: for a first measurement period, a weight value is preset as a reference weight Wr(ii) a For a second measurement period, reference body weight WrThe calculated user's time-interval body weight W for the first measurement time intervalZFor the third and subsequent measurement periods, the body weight W is determined in accordance with the periods of two measurement periods preceding the measurement periodZThe formed trend line determines the reference body weight Wr
Has the advantages that: according to the invention, the steady state with low reliability is removed by selecting the target sleep method, and the selection range of the steady state is narrowed, so that the steady state with high reliability can be extracted, and further the weight value capable of representing the actual weight of the user is obtained, and accurate weight data is provided for basic health monitoring.
Drawings
FIG. 1 is a flow chart of a preferred embodiment of a method for weight measurement based on target sleep according to the present invention;
FIG. 2 is a respective graph of reference body weight confidence for a reference body weight of 80Kg using a normal distribution;
fig. 3 is a schematic diagram of the force condition of the bed plate when four pressure sensors are used.
Detailed Description
In order to make the technical solutions in the embodiments of the present invention better understood and make the above objects, features and advantages of the embodiments of the present invention more comprehensible, the technical solutions in the embodiments of the present invention are described in further detail below with reference to the accompanying drawings.
In the description of the present invention, unless otherwise specified and limited, it is to be noted that the term "connected" is to be interpreted broadly, and may be, for example, a mechanical connection or an electrical connection, or a communication between two elements, or may be a direct connection or an indirect connection through an intermediate medium, and a specific meaning of the term may be understood by those skilled in the art according to specific situations. In addition, for convenience of description, the units of "weight", "force" and "load" in this application are in terms of mass and in units of g.
As shown in fig. 1, a preferred embodiment of the weight measuring method based on target sleep of the present invention comprises the following steps:
step S1, arranging a plurality of pressure sensors under the bed, wherein each pressure sensor is spaced for a first preset time T0Testing primary pressure and converting the pressure into weight, preferably arranging a pressure sensor under each of four bed feet of the bed for a first preset time T0Preferably 1s, of course, the first preset time T0Other values may also be set; defining a total reading A to represent the sum of the reading values of the pressure sensors, and a predefined empty bed reading B to represent the total reading in an empty bed state, wherein the value of the empty bed reading B can be modified and corrected in the measuring process; the instantaneous body weight W measured at each measurement instant is defined as a-B.
Step S2, determining the duration of a measuring period, and determining the reference weight W of the user in the measuring periodr. For statistical purposes, a measurement period of 24 hours is typically set, and a measurement period of 12:00:00 pm on each day to 11:59:59 pm on the next day is preferably selected.
Body weight W in defined time intervalZTo representThe weight value measured by the user in the measuring time interval determines the reference weight W of the user in the measuring time intervalrThe method comprises the following steps: for a first measurement period, a weight value is preset as a reference weight Wr(ii) a For a second measurement period, reference body weight WrThe calculated user's time-interval body weight W for the first measurement time intervalZFor the third and subsequent measurement periods, the body weight W is determined from the periods of the previous two measurement periodsZThe formed trend line determines the reference body weight Wr(ii) a For example, the body weight W during a second measurement period when the measurement period is preceded byZ60.1KG, the body weight W of the first measurement period preceding the measurement periodZAt 60KG, the reference weight W of the measurement period is setrThree replicates were aligned at 59.9 KG. Of course, for the second and subsequent measurement periods, the reference body weight W can also be determined from the mean or median of the preceding measurement periodsr(ii) a That is, the reference body weight W for the second to mth measurement periodsrThe body weight W of all measurement periods before the measurement periodZFor the (m +1) th and subsequent measurement periods, the reference body weight WrThe body weight W of a period m measurement periods before the measurement periodZAverage or median of. m is a natural number greater than 2, for example, when m is 5, the period weight W of 5 measurement periods before the measurement period (all measurement periods before the measurement period when less than 5 measurement periods before the measurement period) is setZThe mean or median of (1) is the reference body weight W of the measurement periodrTo reduce the influence on the following measurement period when an abnormality occurs in the measurement value of a certain measurement period.
Step S3, after a measurement time period ends, determining whether there is a main sleep in the measurement time period, if so, executing step S4, otherwise, executing step S5.
The method for judging the main sleep comprises the steps of presetting a main sleep time threshold, judging the sleep with the total sleep time length being more than or equal to the main sleep time threshold as the main sleep, if a user leaves the bed in the middle of the sleep, but gets into the bed again in the time threshold of getting into the bed and getting out of the bed, counting the time for one sleep before and after, not counting the time for two times, and regarding a common user, the total time length of getting into the bed (namely the time length of the bed in the in-bed state) can be used as the total sleep time length; the values of the main sleep time threshold and the time thresholds for getting on and off the bed can be set and adjusted according to actual conditions; for example, the main sleep time threshold may be set to 3h, and the time threshold for getting on or off bed may be set to 30 min.
Step S4, selecting one-time main sleep as target sleep, and executing step S6;
step S5, selecting the sleep with the longest steady state duration in the measurement period as the target sleep, and executing step S6;
step S6, defining steady state body weight WCRepresenting the weight value of the user during steady state, defining the weight W of the user during a period of timeZRepresenting the weight value measured by the user in a measurement time interval, sequencing all steady states in the measurement time interval according to the confidence coefficient of the steady states, and selecting the steady state weight W with the highest confidence coefficient in the bed stateCOr steady state body weight W of the first few rankedCAs the time period weight W of the userZSteady state body weight WCThe instantaneous weight W measured at any measurement time in the steady state may be taken, or the average value of the instantaneous weights W measured at all measurement times in the steady state may be taken, and preferably the instantaneous weight W measured at the end time of the steady state is taken as the steady state weight WC. In addition, one-time main sleep can be selected as the target sleep in the measurement period, if the main sleep does not exist, one-time sleep with the longest steady state duration in the measurement period is selected as the target sleep, and the steady state weight W in the target sleep is usedCDaily reference body weight W is carried outrAnd (4) calculating.
The following special cases may exist:
(1) when the sleep spanning the time point of 12:00:00 at noon (namely the sleep spanning two measurement periods) is calculated, the sleep is divided into a part before 12:00:00 and a part after 12:00:00, if the time length of the former part is longer than that of the latter part, the sleep is counted as the statistics of the previous day, and if the time length of the former part is less than or equal to that of the latter part, the sleep is counted as the statistics of the latter day; therefore, as long as the time length of the latter part exceeds the former part, the sleep report statistics of the previous day can be started without waiting until the end of the sleep.
(2) For a user who is in bed for a long time, because the time of leaving the bed is often less than half an hour, the condition of sleeping for one time cannot be divided in the 24-hour time which is specified by people, the user is marked as long-term lying in bed, then the main sleeping time and the target sleeping time are marked based on the steady state time instead of the time of being in bed and the time of falling asleep, and the values of the main sleeping time threshold value and the time threshold values of getting on and off the bed for judging the main sleeping time are reduced; for example, a main sleep time threshold value of 30min and a time threshold value of getting on or off bed of 1min can be set; of course, the specific value can be adjusted according to the actual situation.
After the target sleep is selected, if the target sleep comprises multiple stages of steady states, all the steady states in the target sleep are ranked from high to low according to the confidence level C, and the steady state weight W of one stage of steady state with the highest confidence level C is selectedCAs the user's weight W during the last measurement periodZAnd a reference weight W for the current measurement periodr(ii) a Of course, the steady state body weight W of the first several steady states with the confidence C ranking can also be calculatedCAs the average value of the user's weight W in the last measurement periodZAnd a reference weight W for the current measurement periodr
After the measuring time period is finished, the sleep quality of the user in the measuring time period can be evaluated according to indexes such as the sleep times, the sleep duration and abnormal quiet events in the sleep process in the measuring time period; and can be based on the weight W of each previous measurement periodZThe change condition and the sleep quality condition of the user are evaluated.
Determining the Steady State body weight WCThe method comprises the following steps:
step S101, after each measurement, judging whether the measurement time is in an empty bed state or not according to the value of the measured instantaneous weight W, and if the measurement time is in the empty bed state, returning to continue to execute the step S101; if the bed is in the on-bed state, step S102 is executed.
In the present embodiment, the method of determining whether the empty bed state is present is: defining the starting moment as a certain measuring moment of the pressure sensor and the length as vT0The time period of (1) is a short time window, wherein v is a natural number less than u, whether the short time window taking the current measurement time as the end time is in a stable state or not is judged, if the short time window is in the stable state, the average value or the median of the instantaneous body weight W in the short time window is taken as the measured body weight W of the measurement time1Comparing the measured body weight W1Is less than the empty bed threshold value, if the measured body weight W1If the value of (A) is less than the empty bed threshold value, judging that the measurement moment is in an empty bed state; otherwise, it is determined to be in bed. Since the measurement accuracy of the pressure sensor is 10g or less (about 7g), the empty bed threshold value may be set to 10g, but may be set to other values such as 15g and 20 g.
The method for judging whether the short time window is in a stable state comprises the following steps: defining the standard deviation of all instantaneous weight W values recorded within a short time window as σTWDSetting a short steady state standard deviation threshold delta0When a short time window ends, if σ of the short time windowTWD≤δ0Judging that the instantaneous weight W in the short time window is in a stable state; if σTWD>δ0Then, the instantaneous weight W in the short time window is determined to be in an unstable state.
During the steady state of the empty bed condition, each pressure sensor is calibrated once every second preset time, preferably 30 minutes, although the second preset time may be set to other values. In the present embodiment, the calibration method is to use the value of the total reading a currently measured (i.e., the average or median of the total readings at each measurement time within a short time window in which the current measurement time is the end time) as the value of the empty bed reading B, and to measure the weight W at that measurement time1The value of (d) is 0. The influence of temperature change on the pressure sensor can be reduced through calibration, and the measurement precision is improved.
Step S102, defining the starting time as a certain measuring time of the pressure sensor and the length as uT0The time period of (a) is a long time window, where u is a natural number, preferably u is 60 (i.e., uT)01 minute) of the measurement time, whether the instantaneous weight W within a long time window having the current measurement time as the end time is in a steady state or not is judged, if the instantaneous weight W within the long time window is in a steady state, it is judged that the instantaneous weight W is in a steady state currently, and step S103 is executed, and if the instantaneous weight W within the long time window is in an unsteady state, step S101 is executed.
The method for judging whether the instantaneous weight W in the long time window is in a stable state comprises the following steps: defining the standard deviation of all instantaneous weight W values recorded over a long time window as σTWCSetting a long steady state standard deviation threshold delta1When a long time window ends, if σ of the long time windowYWC≤δ1Judging that the instantaneous weight W in the long time window is in a stable state; if σTWC>δ1Then, the instantaneous weight W in the long time window is determined to be in an unstable state.
The steady state is defined as: if the long time window of the stable state is included between two adjacent long time windows of the unstable state, the duration of the long time window of the stable state between the two adjacent long time windows of the unstable state is defined as a stable state.
In this embodiment, the time of the ith measurement is defined as tiI is a natural number; defining a starting time tiHas a long time window TWiDefining the starting time as ti+1Has a long time window TWi+1If the long time window TWiFor non-steady state, the long time window TWi+1In steady state, the slave long time window TW is consideredi+1At a starting time ti+1Begins to enter a steady state, ti+1A start time defined as a steady state; if long time window TWi~TWi+kAll are in steady state, k is a natural number, and the long time window TWi+k+1If the state is unstable, the long time window TW is consideredi+kEnd time (t)i+k+uT0) Steady state junctionBundle, will (t)i+k+uT0) Defined as the end time of the steady state.
Step S103, judging whether the steady state is finished or not, and executing step S104 if the steady state is finished; otherwise, the process returns to step S103.
Step S104, defining steady state body weight WCRepresenting the weight value of the user in the steady state period, and determining the steady state weight W of the user in the steady state period according to the instantaneous weight W measured at a certain measuring moment or a plurality of measuring moments in the steady state periodCFor example, the value of the instantaneous weight W at the steady-state end time may be set as the steady-state weight W during the steady stateCThe average value of the instantaneous body weights W at all the measurement times during the steady state period may be used as the steady state body weight W during the steady state periodC(ii) a The confidence of the steady state is calculated, and the execution returns to step S3.
Defining a Steady State confidence C representing the Steady State body weight W tested in Steady StateCThe method for calculating the steady-state confidence coefficient C comprises the following steps: defining a reference weight confidence CrShows the steady state body weight W according to the steady stateCAnd a reference body weight WrThe smaller the difference is, the reference weight confidence CrThe higher; defining an eccentricity confidence CbRepresenting the confidence coefficient obtained by the eccentricity of the stress action point of the total load of the user after getting on the bed, deviating from the geometric center of the bed, wherein the smaller the eccentricity is, the higher the eccentricity confidence coefficient C isbThe higher; defining a steady state duration confidence ChRepresenting the confidence coefficient obtained from the steady state duration, the longer the steady state duration, the confidence coefficient C of the steady state durationhThe higher; use of Cr、Cb、Ch、Cr×Ch、Cr×Cb、Cb×ChOr Cr×Cb×ChAs the steady-state confidence C, it is preferable to use Cr×Cb×ChAs the steady state confidence C.
1. Method for calculating confidence of steady-state duration
The confidence coefficient of the steady state duration is determined by the duration of the steady state, specifically, the end time of the steady state is subtracted by the start time meter of the steady stateCalculating the duration of the steady state, e.g. TW being the long window of the first steady state in the steady statei+1The last steady state long time window is TWi+KThen the steady state duration is: t is ti+K+uT0-ti+1=(u+k-1)T0. Then manually setting a standard value T of the expected steady state durationAThis value can be updated iteratively, so that in theory its initial value can be arbitrarily specified, e.g. T can be specifiedA1 h; selecting one with TAFor statistical distribution of expected values, which is a time interval based statistic, we temporarily choose exponential distribution according to general experience, although other distributions can be chosen.
For a random variable X, if an exponential distribution is followed, it is written as X to Exp (λ), and its cumulative distribution function can be expressed as:
Figure BDA0002905602230000131
wherein, the independent variable x is the time length of a certain period of steady state, and the lambda expresses the frequency of the occurrence of non-steady state events in unit time, and defines TAIs the desired value of the steady-state time duration, i.e. the standard value of the desired steady-state time duration, λ is 1/TA
In the present system, the argument x is the duration T of a certain steady stateNAnd λ is the frequency of occurrence of an unsteady state event per unit time. The purpose of using this function is to calculate the cumulative sum of the probabilities of non-steady-state events occurring in all time periods less than a certain time period, i.e. the cumulative distribution function, as our steady-state time period confidence function, thus giving the time period T of any one steady stateNThe confidence of the steady state duration under a certain expected condition is marked as ChThis is equivalent to giving a confidence score of 1 score for full score, the higher the score, ChThe higher. ChIs the same as the cumulative distribution function, namely:
Figure BDA0002905602230000132
wherein λ is 1/TA,x=TN
The expected value T needs to be specified in advance before calculationAE.g. an expected value T specifying the distributionA1h (i.e. only 1 non-steady state event occurs within 1 hour), the steady state duration T can be derived from the functional expressionNAnd steady state duration confidence ChThe value correspondence of (a) is shown in table 1:
TABLE 1 Steady-State duration and Steady-State duration confidence degree correspondence Table (T)A=1h)
x=TN 0.1 0.2 0.3 0.4 0.5 0.6
FX(x)=Ch 0.0952 0.1813 0.2592 0.3297 0.3935 0.4512
x=TN 0.7 0.8 0.9 1.0 1.1 1.2
FX(x)=Ch 0.5034 0.5507 0.5934 0.6321 0.6671 0.6988
x=TN 1.3 1.4 1.5 1.6 1.7 1.8
FX(x)=Ch 0.7275 0.7534 0.7769 0.7981 0.8173 0.8347
x=TN 1.9 2.0 2.1 2.2 2.3 2.4
FX(x)=Ch 0.8504 0.8647 0.8775 0.8892 0.8997 0.9093
x=TN 2.5 2.6 2.7 2.8 2.9 3.0
FX(x)=Ch 0.9179 0.9257 0.9328 0.9392 0.9450 0.9502
Looking up a table, when the steady-state time length TN is 1h, the confidence coefficient C of the steady-state time lengthh0.6321, when the steady state time period TNAt 0.5h, the confidence coefficient C of the steady state durationhIs 0.3935.
Steady state duration confidence ChMainly used for combining with the reference weight confidence coefficient and the eccentricity confidence coefficient to obtain the data of the same sleep under each steady stateSteady state body weight W ofCCompared with the degree of closeness of the actual body weight, therefore, if the set expected value T is found in the actual operation of the systemAToo high (it is difficult for a person to achieve a steady state of up to 1h during sleep) and thus the score is too low, especially after the three confidences are combined, the value of the steady state confidence number C is too small, 0 after the decimal point is too large to be observed, and the expectation value T can be adjusted down properlyAFor example, specifying the expected value TAWhen 0.5h, the steady state duration TNAnd steady state duration confidence ChThe relationship of (A) is shown in Table 2:
TABLE 2 Steady-State duration and Steady-State duration confidence level mapping Table (T)A=0.5h)
Figure BDA0002905602230000141
Figure BDA0002905602230000151
Thus, the steady state duration TNAt 0.5h, the confidence coefficient C of the steady state durationh0.6321, steady state duration TNConfidence of steady state duration C at 1hhReaching 0.8647.
2. Calculation method of reference weight confidence
The reference weight confidence is determined by the steady state weight W of the steady stateCAnd a reference body weight WrIs determined if the last weight value of a person was WiIn the absence of any additional disturbance (e.g. eating or defecation), it is clear that the result obtained is, with respect to confidence, the weight value to be weighed next time equal to WiThe time confidence is definitely better than the weight value of (W)i1kg), the weight value of the next weighing is (W)i1kg) is definitely better than the value of body weight (W)i2kg), and so on, that is, the closer the weight value of the next weighing is to WiThe more trusted it is, and the less trusted it is otherwise. In practical application, we refer to the weight WrAs a basis for the calculation to evaluateSteady state body weight WCConfidence of (2), i.e. reference body weight confidence, denoted Cr
In this embodiment, the reference weight confidence level C is characterized by the probability of the non-confidence interval of the normal distribution functionr. The specific calculation method is as follows:
if the random variable X follows a normal distribution with a position parameter (mean) of μ and a scale parameter (standard deviation) of σ, its probability density can be expressed as:
Figure BDA0002905602230000152
where x is the argument of the probability density distribution function. Defining the probability that a random event X deviates from μ by less than or equal to X as P (X ≦ X), the cumulative distribution function may be expressed as:
Figure BDA0002905602230000161
let mu be WrI.e. with reference body weight WrAs the mean μ of a normal distribution; standard deviation sigma is body weight standard deviation sigmarIn this case, the standard deviation σ of body weight is first specifiedrThe value of (a), which can be empirically specified when first measuredrAn initial value of (1); sigmarIs not appropriate or relevant, and the standard deviation sigma of the body weight can be measured according to the statistical condition of historical data in the subsequent measurementrIs iteratively updated.
For any X, consider the probability that random event X deviates from μ by more than X, i.e., when X < μ, the probability of X < X is P (X < X, and X ≧ 2 μ -X); when X ≧ μ, this probability is P (X < 2 μ -X, and X ≧ X). The range of X in parentheses is the confidence interval for X (as opposed to the confidence interval normally used, as illustrated, the system focuses on the dark shaded portion), and the corresponding P is the probability that X falls within this confidence interval, known as the confidence level.
P (X < X, and X ≧ 2 μ -X) ═ 2f (X) when X < μ;
when X is not less than mu, P (X < 2 mu-X, and X not less than X) is 2[1-F (X) ].
Similarly, for any steady state body weight WCInstantaneous body weight W at any measurement instant deviates from WrTo an extent exceeding WCDeviation WrIs (i.e. W falls within the range of W)CAnd WrProbability of a defined non-confidence interval), i.e., reflects WCThe confidence level of this reading, which is the reference weight confidence CrIs strictly defined. Namely:
WC<Wrtime, reference weight confidence CrExpressed as:
Figure BDA0002905602230000171
WC≥Wrtime, reference weight confidence CrExpressed as:
Figure BDA0002905602230000172
wherein x ═ Wc,μ=Wr,σ=σr
Examples are as follows: the weight fluctuation of an adult within one day is that + -1% of his total body weight is very normal, nor is + -2% rare, but more than + -3% is rare. According to the definition of normal distribution,. mu. +. 2. sigmarThe probability of occurrence of an internal event is about 0.9545, and we can tentatively assign a + -3% offset level of + -2 σrThen for a reference weight Wr2 sigma for an adult of 80kgr80 × 3% ═ 2.4, i.e., σr1.2 kg. The results of this calculation are shown in table 3: TABLE 3 confidence degree correspondence table between measured body weight and reference body weight
x=W 76.2 76.4 76.6 76.8 77.0 77.2 77.4 77.6
Cr=P 0.1133 0.1336 0.1566 0.1824 0.2113 0.2433 0.2787 0.3173
x=W 77.8 78.0 78.2 78.4 78.6 78.8 79.0 79.2
Cr=P 0.3593 0.4047 0.4533 0.5050 0.5597 0.6171 0.6769 0.7389
x=W 79.4 79.6 79.8 80.0 80.2 80.4 80.6 80.8
Cr=P 0.8026 0.8676 0.9336 1.0000 0.9336 0.8676 0.8026 0.7389
x=W 81.0 81.2 81.4 81.6 81.8 82.0 82.2 82.4
Cr=P 0.6769 0.6171 0.5597 0.5050 0.4533 0.4047 0.3593 0.3173
x=W 82.6 82.8 83.0 83.2 83.4 83.6 83.8 84.0
Cr=P 0.2787 0.2433 0.2113 0.1824 0.1566 0.1336 0.1133 0.0956
As shown in the figure2, the dark shaded portion is the steady state body weight WCExceed (W)r±2σr) Range (i.e. W)C> 82.4kg or WC< 77.6kg) of body weight. And by using normal distribution calculation, the deviation degrees of the two are the same, the directions are opposite, and the confidence degrees are the same. Of course, since WC≥WrConfidence of time is higher than WC<WrThe confidence of the time, therefore, the reference weight confidence C can be calculated by adjusting the normal distribution to the skewed distributionr
3. Method for calculating eccentricity confidence
The eccentricity confidence coefficient is determined by the eccentricity deviating from the geometric center of the bed according to the stress action point of the total load of the user after getting on the bed, and the following description takes the example that 1 pressure sensor is respectively arranged on four bed legs of the bed; defining the measurement values of four pressure sensors, namely absolute outputs of A1, A2, A3 and A4; defining the measurement values of the four pressure sensors in an empty bed state, namely reference outputs of B1, B2, B3 and B4; the pressure value increased by a single pressure sensor in a bed state relative to an empty bed state is defined as the reading of the pressure sensor and is respectively marked as I1, I2, I3 and I4, wherein I1 is A1-B1, I2 is A2-B2, I3 is A3-B3, and I4 is A4-B4; the stress condition of the bed board is shown in figure 3.
Assuming that the bed plate is an ideal rectangle, the gravity center of the bed plate is the geometric center of the bed plate, and the pressure sensors are accurately installed at the four corners of the bed plate, a rectangular plane coordinate system as shown in fig. 3 can be set to use the action point (x) of I33,y3) As origin, the point of action of I3 and the point of action of I4 (x)4,y4) The line is the x-axis, the action point of I3 and the action point of I1 (x)1,y1) The connecting line is a y-axis, and the coordinate of the action point of I2 is (x)2,y2) Then x3=x1=0,y3=y4=0,(xc,yc) Is the geometric center of the bed board.
Similar to the calculation method of the reference weight confidence coefficient, the total load F at any time of the steady state is taken as the total load F of the steady state according to the cumulative distribution function calculation formula of normal distribution0Preferably, the total load F at the end of the steady state is taken as F0Let the coordinate of the point of application of force be (x)0,y0) Let x be the argument of the probability density distribution function0The abscissa of the point of application of force of the total load F at any measurement instant deviates from xcTo an extent exceeding x0Deviation xcIs determined (i.e. the abscissa component of the point of action of the total load F falls by x)0And xcProbability of a defined non-confidence interval), i.e. reflecting F0The confidence level due to its eccentricity, which is the eccentricity confidence CbIs strictly defined.
According to the stress balance and the moment balance respectively taking the x axis and the y axis as rotating shafts, the united vertical type can be obtained:
Figure BDA0002905602230000191
due to x2=x4,y1=y2And easily obtaining:
Figure BDA0002905602230000192
Figure BDA0002905602230000193
coordinate point (x)0,y0) Deviated from the geometric center (x) of the bed boardc,yc) The distance of (c) may be referred to as eccentricity. However, in general, the behavior of a person in bed is mainly a sideways flip around a line in the direction of the short side, or approximately parallel to the long side, so that in general we only need to care about the eccentricity in the direction of the short side, neglecting the eccentricity in the direction of the long side, and the total eccentricity. Then, if the x-axis direction of the abscissa is the short side of the bed, we only need to care about the eccentricity in this direction. (Note: the x-axis direction of the abscissa in the example graph is more like the long side due to perspective reasons.)
The eccentricity confidence is intuitively seen, namely the more the person leans to the middle of the bed, the more reliable the weighing reading is, and the closer to the bed side, the more unreliable the weighing reading is.
Of course, in practical applications, the pressure may be transmitted through the bed legs, the bed legs may not be exactly located at the four corners of the bed, the four stress points may not be in an ideal rectangle, but the interference caused by these factors is negligible, and for a system in which four bed legs are distributed in a nearly rectangular shape, the distance between the bed legs can be calculated according to the above formula as long as the distance is known.
For the condition that n bed legs are arranged on n pressure sensors, n is a natural number larger than 3, calculation can be carried out by the same method as long as a plane rectangular coordinate system is established and the horizontal coordinate and the vertical coordinate of each pressure sensor are determined, and the stress expression is as follows:
Figure BDA0002905602230000201
the calculation yields:
Figure BDA0002905602230000202
Figure BDA0002905602230000203
where Ii denotes the pressure value of the ith pressure sensor increased in the bed state relative to the empty bed state, xiDenotes the abscissa, y, of the ith pressure sensoriThe ordinate of the i-th pressure sensor is indicated.
When only the eccentricity in the x-axis direction of the abscissa is considered, the eccentricity confidence coefficient C can be obtainedbThe calculation method of (c) is as follows:
x0<xctime, eccentricity confidence CbIs shown as
Figure BDA0002905602230000204
x0≥xcTime, eccentricity confidence CbIs shown as
Figure BDA0002905602230000211
Wherein σbAs the standard deviation of eccentricity in the x-axis direction of the abscissa, σ can be empirically specified at the time of the first measurementbAn initial value of (1); sigmabIs not appropriate or relevant, and the eccentricity standard deviation sigma can be measured later according to the statistical condition of historical databAnd performing iterative updating.
The undescribed parts of the present invention are consistent with the prior art, and are not described herein.
The above description is only an embodiment of the present invention, and not intended to limit the scope of the present invention, and all equivalent structures made by using the contents of the present specification and the drawings can be directly or indirectly applied to other related technical fields, and are within the scope of the present invention.

Claims (10)

1. A weight measurement method based on target sleep is characterized by comprising the following steps:
step S1, arranging a plurality of pressure sensors under the bed, wherein each pressure sensor is spaced for a first preset time T0Testing primary pressure, converting the pressure into weight, defining a total reading A to represent the sum of the reading values of all pressure sensors, and predefining an empty bed reading B to represent the total reading in an empty bed state; defining the instantaneous body weight W-A-B measured at each measurement moment;
step S2, determining the duration of a measuring period, and determining the reference weight W of the user in the measuring periodr
Step S3, after a measuring time interval is finished, judging whether a main sleep exists in the measuring time interval, wherein the main sleep judging method is to preset a main sleep time threshold value, and judging the sleep with the total sleep time length being more than or equal to the main sleep time threshold value as the main sleep, if so, executing the step S4, otherwise, executing the step S5;
step S4, selecting one-time main sleep as target sleep, and executing step S6;
step S5, selecting the sleep with the longest steady state duration in the measurement period as the target sleep, and executing step S6;
step S6, defining steady state body weight WCRepresenting the weight value of the user during steady state, defining the weight W of the user during a period of timeZRepresenting the body weight value measured by the user during a measurement period, using the steady state body weight W of a certain steady state or a plurality of steady states in the target sleepCThe value of (A) calculates the weight W of the user during the measurement periodZ
2. The method for measuring body weight based on target sleep according to claim 1, wherein the time thresholds for getting on and off the bed are set in advance, and when the user gets out of the bed during sleep and gets on the bed again within the time thresholds for getting on and off the bed, the user counts a sleep before and after.
3. The method of claim 2, wherein when the time taken for the user to get out of bed in a measurement period is less than the time threshold for getting in or out of bed, the steady-state duration is used as the sleep duration to determine the main sleep and the target sleep, and the values of the time threshold for the main sleep and the time threshold for getting in or out of bed are decreased.
4. The method of claim 1, wherein the sleep time length is calculated for the sleep spanning two measurement periods, the sleep is divided into two parts, i.e., a front part and a rear part according to the measurement periods, if the time length of the front part is longer than that of the rear part, the sleep is counted as the statistics of the previous measurement period, and if the time length of the front part is less than or equal to that of the rear part, the sleep is counted as the statistics of the rear measurement period.
5. Target sleep based weight measurement method according to claim 1After the target sleep is selected, if the target sleep comprises multiple stages of steady states, all the steady states in the target sleep are ranked from high to low according to the confidence level C, and the steady state weight W of the stage of steady state with the highest confidence level C is selectedCAs the user's weight W during the last measurement periodZAnd a reference weight W for the current measurement periodr(ii) a Or calculating the steady state weight W of the first several steady states ranked by the confidence CCAs the user's weight W during the last measurement periodZAnd a reference weight W for the current measurement periodr
6. The sleep goal-based weight measurement method of claim 1, wherein a steady state weight Wt is determinedCThe method comprises the following steps:
step S101, judging whether the measuring time is in an empty bed state or not according to the value of the weight W after each measurement, and returning to continue to execute the step S101 if the measuring time is in the empty bed state; if the bed is in the state, executing step S102;
step S102, defining the starting time as a certain measuring time of the pressure sensor and the length as uT0The time period of (1) is a long time window, wherein u is a natural number, whether the instantaneous weight W in the long time window with the current measurement time as the end time is in a stable state or not is judged, if the instantaneous weight W in the long time window is in the stable state, the current state is judged to be in the stable state, and the step S103 is executed, otherwise, the step S101 is executed;
step S103, judging whether the steady state is finished or not, and executing step S104 if the steady state is finished; otherwise, returning to continue executing step S103;
step S104, determining the steady state weight W of the user in the steady state period according to the value of the instantaneous weight W measured at a certain measuring time or a plurality of measuring times in the steady state periodC
7. The sleep-targeted weight measurement method according to claim 6, wherein in the step S102, it is determined whether the instantaneous weight W is stable for a long time windowThe method for determining the state comprises the following steps: defining the standard deviation of all instantaneous weight W values recorded over a long time window as σTWCSetting a long steady state standard deviation threshold delta1When a long time window ends, if σ of the long time windowTWC≤δ1Judging that the instantaneous weight W in the long time window is in a stable state; if σTWC>δ1Then, the instantaneous weight W in the long time window is determined to be in an unstable state.
8. The sleep-oriented weight measurement method as claimed in claim 6, wherein a confidence level of each steady state is further calculated at the end of the steady state, wherein the confidence level of a steady state indicates the weight W of the steady state tested in the steady stateCThe confidence level of (C) is recorded as a steady-state confidence level C; after the end of the measurement period, determining the weight W of the user during the measurement periodZThe method comprises ranking the steady states in the measurement period according to the confidence of the steady state, and taking the weight W of one or more steady states during the steady state according to the rankingCDetermining the weight W of the user during the measurement periodZ
9. The method of claim 8, wherein the confidence level of homeostasis is calculated by: defining a reference weight confidence CrShows the steady state body weight W according to the steady stateCAnd a reference body weight WrThe smaller the difference is, the reference weight confidence CrThe higher; defining an eccentricity confidence CbRepresenting the confidence coefficient obtained by the eccentricity of the stress action point of the total load of the user after getting on the bed, deviating from the geometric center of the bed, wherein the smaller the eccentricity is, the higher the eccentricity confidence coefficient C isbThe higher; defining a steady state duration confidence ChRepresenting the confidence coefficient obtained from the steady state duration, the longer the steady state duration, the confidence coefficient C of the steady state durationhThe higher; use of Cr、Cb、Ch、Cr×Ch、Cr×Cb、Cb×ChOr Cr×Cb×ChAs the steady state confidence C.
10. The sleep-targeted weight measurement method according to claim 1, wherein in the step S2, the reference weight W of the user during the measurement period is determinedrThe method comprises the following steps: for a first measurement period, a weight value is preset as a reference weight Wr(ii) a For a second measurement period, reference body weight WrThe calculated user's time-interval body weight W for the first measurement time intervalZFor the third and subsequent measurement periods, the body weight W is determined in accordance with the periods of two measurement periods preceding the measurement periodZThe formed trend line determines the reference body weight Wr
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Cited By (4)

* Cited by examiner, † Cited by third party
Publication number Priority date Publication date Assignee Title
CN113514140A (en) * 2021-06-30 2021-10-19 北京三快在线科技有限公司 Electronic scale, weight detection method and device for target object and storage medium
CN113974567A (en) * 2021-11-09 2022-01-28 重庆火后草科技有限公司 Method for calculating metabolic rate of sleep process
CN113974568A (en) * 2021-11-09 2022-01-28 重庆火后草科技有限公司 Method for calculating metabolic rate of sleep process based on slope interference removal
CN114027792A (en) * 2021-11-09 2022-02-11 重庆火后草科技有限公司 Sleep process metabolic rate detection method based on interference elimination of linear correlation coefficient

Citations (14)

* Cited by examiner, † Cited by third party
Publication number Priority date Publication date Assignee Title
US20030208847A1 (en) * 1996-11-18 2003-11-13 Kinetic Concepts, Inc. Bariatric treatment system and related methods
EP1895281A2 (en) * 2006-08-29 2008-03-05 Tanita Corporation Digital Scale
EP2027815A2 (en) * 2007-08-24 2009-02-25 Tanita Corporation Sleep state measuring apparatus and sleep state measuring method
CN101472545A (en) * 2006-06-19 2009-07-01 昭和电工株式会社 Method of detecting presence of subject on bed
CN102078184A (en) * 2010-12-31 2011-06-01 深圳清华大学研究院 Method for monitoring body position by using weighing bed and weighing bed
CN102308188A (en) * 2009-02-09 2012-01-04 欧姆龙健康医疗事业株式会社 Body weight management device, body weight management method, and body weight managemtn program
CN102458339A (en) * 2009-06-11 2012-05-16 八乐梦医用床有限公司 Bed device
CN103327889A (en) * 2011-11-14 2013-09-25 塞卡股份公司 Method and device for determining the body weight of a person
CN103381123A (en) * 2013-06-13 2013-11-06 厚福医疗装备有限公司 High-precision dynamic weighing sickbed system and automatic control method thereof
US20140124273A1 (en) * 2012-11-05 2014-05-08 Hill-Rom Services, Inc. Automatic Weight Offset Calculation for Bed Scale Systems
JP2014235090A (en) * 2013-06-03 2014-12-15 アイシン精機株式会社 Body weight measuring apparatus
JP2017077404A (en) * 2015-10-21 2017-04-27 富士通株式会社 Measuring apparatus, measuring method, and measuring program
CN106725327A (en) * 2016-12-28 2017-05-31 天津众阳科技有限公司 Based on dormant sleep quality computational methods
CN112082633A (en) * 2020-09-11 2020-12-15 深圳市双佳医疗科技有限公司 Weight measuring method for stabilizing weight value under human body shaking condition

Patent Citations (14)

* Cited by examiner, † Cited by third party
Publication number Priority date Publication date Assignee Title
US20030208847A1 (en) * 1996-11-18 2003-11-13 Kinetic Concepts, Inc. Bariatric treatment system and related methods
CN101472545A (en) * 2006-06-19 2009-07-01 昭和电工株式会社 Method of detecting presence of subject on bed
EP1895281A2 (en) * 2006-08-29 2008-03-05 Tanita Corporation Digital Scale
EP2027815A2 (en) * 2007-08-24 2009-02-25 Tanita Corporation Sleep state measuring apparatus and sleep state measuring method
CN102308188A (en) * 2009-02-09 2012-01-04 欧姆龙健康医疗事业株式会社 Body weight management device, body weight management method, and body weight managemtn program
CN102458339A (en) * 2009-06-11 2012-05-16 八乐梦医用床有限公司 Bed device
CN102078184A (en) * 2010-12-31 2011-06-01 深圳清华大学研究院 Method for monitoring body position by using weighing bed and weighing bed
CN103327889A (en) * 2011-11-14 2013-09-25 塞卡股份公司 Method and device for determining the body weight of a person
US20140124273A1 (en) * 2012-11-05 2014-05-08 Hill-Rom Services, Inc. Automatic Weight Offset Calculation for Bed Scale Systems
JP2014235090A (en) * 2013-06-03 2014-12-15 アイシン精機株式会社 Body weight measuring apparatus
CN103381123A (en) * 2013-06-13 2013-11-06 厚福医疗装备有限公司 High-precision dynamic weighing sickbed system and automatic control method thereof
JP2017077404A (en) * 2015-10-21 2017-04-27 富士通株式会社 Measuring apparatus, measuring method, and measuring program
CN106725327A (en) * 2016-12-28 2017-05-31 天津众阳科技有限公司 Based on dormant sleep quality computational methods
CN112082633A (en) * 2020-09-11 2020-12-15 深圳市双佳医疗科技有限公司 Weight measuring method for stabilizing weight value under human body shaking condition

Cited By (7)

* Cited by examiner, † Cited by third party
Publication number Priority date Publication date Assignee Title
CN113514140A (en) * 2021-06-30 2021-10-19 北京三快在线科技有限公司 Electronic scale, weight detection method and device for target object and storage medium
CN113974567A (en) * 2021-11-09 2022-01-28 重庆火后草科技有限公司 Method for calculating metabolic rate of sleep process
CN113974568A (en) * 2021-11-09 2022-01-28 重庆火后草科技有限公司 Method for calculating metabolic rate of sleep process based on slope interference removal
CN114027792A (en) * 2021-11-09 2022-02-11 重庆火后草科技有限公司 Sleep process metabolic rate detection method based on interference elimination of linear correlation coefficient
CN113974568B (en) * 2021-11-09 2024-03-26 重庆火后草科技有限公司 Slope interference-free method for calculating metabolic rate of sleep process
CN113974567B (en) * 2021-11-09 2024-03-26 重庆火后草科技有限公司 Method for calculating metabolic rate in sleeping process
CN114027792B (en) * 2021-11-09 2024-04-09 重庆火后草科技有限公司 Metabolic rate detection method for sleep process based on linear correlation coefficient interference elimination

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