CN112254866A - Method for inverting sea surface air pressure by fusion of MWTS-II and MWHTS - Google Patents

Method for inverting sea surface air pressure by fusion of MWTS-II and MWHTS Download PDF

Info

Publication number
CN112254866A
CN112254866A CN202011104191.8A CN202011104191A CN112254866A CN 112254866 A CN112254866 A CN 112254866A CN 202011104191 A CN202011104191 A CN 202011104191A CN 112254866 A CN112254866 A CN 112254866A
Authority
CN
China
Prior art keywords
air pressure
sea surface
surface air
mwhts
observed
Prior art date
Legal status (The legal status is an assumption and is not a legal conclusion. Google has not performed a legal analysis and makes no representation as to the accuracy of the status listed.)
Granted
Application number
CN202011104191.8A
Other languages
Chinese (zh)
Other versions
CN112254866B (en
Inventor
贺秋瑞
张永新
李德光
金彦龄
贾世杰
任桢琴
周莉
Current Assignee (The listed assignees may be inaccurate. Google has not performed a legal analysis and makes no representation or warranty as to the accuracy of the list.)
Luoyang Normal University
Original Assignee
Luoyang Normal University
Priority date (The priority date is an assumption and is not a legal conclusion. Google has not performed a legal analysis and makes no representation as to the accuracy of the date listed.)
Filing date
Publication date
Application filed by Luoyang Normal University filed Critical Luoyang Normal University
Priority to CN202011104191.8A priority Critical patent/CN112254866B/en
Publication of CN112254866A publication Critical patent/CN112254866A/en
Application granted granted Critical
Publication of CN112254866B publication Critical patent/CN112254866B/en
Active legal-status Critical Current
Anticipated expiration legal-status Critical

Links

Images

Classifications

    • GPHYSICS
    • G01MEASURING; TESTING
    • G01LMEASURING FORCE, STRESS, TORQUE, WORK, MECHANICAL POWER, MECHANICAL EFFICIENCY, OR FLUID PRESSURE
    • G01L11/00Measuring steady or quasi-steady pressure of a fluid or a fluent solid material by means not provided for in group G01L7/00 or G01L9/00
    • G01L11/002Measuring steady or quasi-steady pressure of a fluid or a fluent solid material by means not provided for in group G01L7/00 or G01L9/00 by thermal means, e.g. hypsometer
    • GPHYSICS
    • G06COMPUTING; CALCULATING OR COUNTING
    • G06NCOMPUTING ARRANGEMENTS BASED ON SPECIFIC COMPUTATIONAL MODELS
    • G06N3/00Computing arrangements based on biological models
    • G06N3/02Neural networks
    • G06N3/04Architecture, e.g. interconnection topology
    • G06N3/044Recurrent networks, e.g. Hopfield networks
    • GPHYSICS
    • G06COMPUTING; CALCULATING OR COUNTING
    • G06NCOMPUTING ARRANGEMENTS BASED ON SPECIFIC COMPUTATIONAL MODELS
    • G06N3/00Computing arrangements based on biological models
    • G06N3/02Neural networks
    • G06N3/08Learning methods
    • G06N3/084Backpropagation, e.g. using gradient descent

Abstract

A method for inverting sea surface air pressure by fusion of MWTS-II and MWHTS comprises establishing a brightness temperature matching pair of MWTS-II observation brightness temperature and MWHTS observation brightness temperature in time and space; establishing a matching data set of the brightness temperature matching pair and the sea surface air pressure in time and space, and forming an analysis data set and a verification data set; training a BP neural network by utilizing the analysis data set, and sequencing the contribution of the observed brightness temperature of each channel to the inversion sea surface air pressure according to the training result; according to the sequence that the contribution of the observed bright temperature of each channel to the inverted sea surface air pressure is from large to small, the observed bright temperatures of the channels are increased one by one, a BP neural network is trained, and the optimal channel combination of MWTS-II and MWHTS fusion inverted sea surface air pressure is established according to the training result. The method can obtain higher inversion accuracy than that of a single satellite-borne microwave radiometer for inverting the sea surface air pressure, and is simple and easy to operate.

Description

Method for inverting sea surface air pressure by fusion of MWTS-II and MWHTS
Technical Field
The invention relates to a method for remotely sensing sea surface air pressure by satellite-borne microwaves, belongs to the technical field of microwave remote sensing, and particularly relates to a method for inverting the sea surface air pressure by fusion of MWTS-II and MWHTS.
Background
Sea surface air pressure is a basic parameter for describing atmospheric conditions, and plays an important role in applications such as numerical weather forecasting, tropical cyclone analysis and forecasting, and climate change research. The acquisition of high-precision sea surface air pressure value is always one of the more concerned hot spots in the fields of atmospheric science and marine science. At present, the sea surface air pressure data is mainly obtained by direct observation means such as buoys, commercial ships, airborne platform dropsondes and the like. The direct observation data has the defects of low spatial resolution, high detection cost, non-uniform detection precision and the like, so that the direct observation data cannot meet the requirements of meteorological and climatological research and application.
Satellite-borne microwave remote sensing is an important means for realizing global dense detection of sea surface air pressure. The microwave radiometer is used as an important load of satellite-borne remote sensing atmosphere, and the purpose of detecting sea surface air pressure can be realized by measuring the total absorption of the vertical column of oxygen. In the microwave band, the oxygen absorption lines have a distinct frequency division characteristic, with one resonance absorption line at 118GHz and the remaining 45 lines forming a resonance absorption band centered at 60 GHz. At present, a microwave moisture temperature detector (MWHTS) arranged at a 118GHz frequency band, a microwave thermometer II type (MWTS-II) arranged at a 60GHz frequency band, an advanced microwave detection unit (AMSU), an advanced technology microwave detector (ATMS) and other satellite-borne microwave radiometers can realize the detection of sea surface air pressure.
When the atmosphere is remotely detected, a plurality of detection platforms or a plurality of detection frequency bands are used, and atmospheric parameter information which is richer than that of a single detection means is obtained. For the detection of sea surface air pressure by the satellite-borne microwave radiometer, the sea surface air pressure inversion fusing 60GHz and 118GHz detection data is not realized at present due to the limitation of a satellite-borne platform. And all 13 channels of the MWTS-II carried on Fengyun three-number C star and D star are arranged in a 60GHz resonance absorption band, the MWHTS carried on the same satellite platform has 8 channels arranged on 118GHz oxygen absorption lines, 2 channels arranged on a window area frequency band and 5 channels arranged on 183 GHz water vapor absorption lines. The on-orbit operation of MWTS-II and MWHTS provides the possibility of sea surface barometric inversion fusing 60GHz and 118GHz detection data. In addition, the correlation between the water vapor absorption and the oxygen absorption also provides a new idea for further improving the inversion accuracy of the sea surface air pressure.
Disclosure of Invention
In order to solve the technical problems, the invention provides a method for inverting sea surface air pressure by fusion of MWTS-II and MWHTS.
In order to realize the technical purpose, the adopted technical scheme is as follows: a method for inverting sea surface air pressure by fusion of MWTS-II and MWHTS comprises the following steps:
the method comprises the following steps: establishing a brightness temperature matching pair of MWTS-II observation brightness temperature and MWHTS observation brightness temperature in time and space;
step two: establishing a matching data set of a bright temperature matching pair and sea surface air pressure in time and space, and dividing the matching data set into an analysis data set and a verification data set;
step three: respectively taking the observed brightness of 13 channels of the MWTS-II in the analysis data set and the observed brightness of 15 channels of the MWHTS as input, taking the sea surface air pressure of the corresponding analysis data set as output, forming 28 training data sets and respectively training a BP neural network, counting the mean square error of each training data set after the BP neural network is trained, and sequencing the contributions of the observed brightness of the 28 channels to the inversion sea surface air pressure from large to small according to the size of the mean square error;
step four: based on the observed bright temperature of the channel which has the largest contribution to the inverted sea surface air pressure, according to the sequence that the observed bright temperatures of 28 channels have the largest contribution to the inverted sea surface air pressure from large to small, the observed bright temperatures of the channels are increased one by one, after the observed bright temperatures of the channels are increased, the observed bright temperature of the formed channel combination is used as the input of a BP neural network, the corresponding sea surface air pressure is used as the output, the BP neural network is trained until the mean square error of the trained BP neural network is not reduced any more, the increase of the observed bright temperatures of the channels is stopped, and the optimal channel combination of the MWTS-II and MWHTS fusion inverted sea surface air pressure is established;
step five: and F, inverting the observed brightness temperature of the optimal channel combination obtained in the step four to obtain the sea surface air pressure.
Matching the MWTS-II and the MWHTS observed brightness temperature according to a matching rule that the time error is less than 0.2 s and the longitude and latitude error is less than 0.01 degrees; and performing quality control on the observed bright temperature obtained by matching according to a screening rule with the value of more than 180K and less than 310K to form a MWTS-II and MWHTS bright temperature matching pair.
And (3) matching the sea surface air pressure with the bright temperature matching pair established in the first step, wherein the matching rule is that the time error is less than 0.5 h and the longitude and latitude error is less than 0.1 DEG, and establishing a matching data set of the bright temperature matching pair of MWTS-II and MWHTS and the sea surface air pressure.
Randomly selecting 80% of the matched data in the matched data set to form an analysis data set, and remaining 20% of the matched data to form a verification data set.
The fourth step of the invention specifically comprises:
on the basis of the observed bright temperatures of the channels which have the largest contribution to the inversion sea surface air pressure, the observed bright temperatures of the channels are increased one by one according to the sequence that the observed bright temperatures of the 28 channels established in the step three have the smallest contribution to the inversion sea surface air pressure, so as to form the observed bright temperatures of the channel combination; training a BP neural network by taking the observed brightness temperature of the channel combination as input and the corresponding sea surface air pressure as output; and stopping increasing the observed bright temperature of the channel when the mean square error of the BP neural network corresponding to the observed bright temperature of the channel combination is not reduced any more with the increase of the observed bright temperature of the channel, wherein the channel combination at the moment is the optimal channel combination of the MWTS-II and the MWHTS fusion inversion sea surface air pressure.
The invention has the beneficial effects that: the method aims at improving the accuracy of the satellite-borne microwave remote sensing data for inverting the sea surface air pressure, uses a BP neural network to count the contribution of the observed bright temperature of each channel of MWTS-II and MWHTS to the inverted sea surface air pressure, and establishes the optimal channel combination of the MWTS-II and MWHTS fusion inverted sea surface air pressure according to the magnitude sequence of the contribution of the observed bright temperature of each channel to the inverted sea surface air pressure. The method realizes the purpose of inverting the sea surface air pressure by fusing the detection data of 60GHz and 118GHz, acquires richer sea surface air pressure information by detecting the sea surface air pressure by using different frequency bands, and has higher precision and simple and easy operation compared with the inversion result of the detection data of a single frequency band.
Drawings
FIG. 1 is a flow chart of a method of the present invention;
FIG. 2 is a graph showing the comparison of the accuracy of sea surface barometric pressure inversion between the bright temperature observed for all channels of MWHTS, the bright temperature observed for all channels of MWTS-II, and the bright temperature observed for the optimal channel combination in example 1.
Detailed Description
The present invention is further described with reference to the following examples and the accompanying drawings, which are not intended to limit the scope of the invention as claimed.
A method for inverting sea surface air pressure by fusion of MWTS-II and MWHTS comprises the following steps:
the method comprises the following steps: and establishing a brightness temperature matching pair of MWTS-II observation brightness temperature and MWHTS observation brightness temperature in time and space.
Step two: and establishing a matching data set of the bright temperature matching pair and the sea surface air pressure in time and space, and forming an analysis data set and a verification data set.
Step three: firstly, respectively taking the observed brightness temperature of 13 MWTS-II channels and 15 MWHTS channels in an analysis data set as input, and taking the corresponding sea surface air pressure in the analysis data set as output to form 28 training data sets; then, respectively training the BP neural networks by using 28 training data sets, wherein the 28 BP neural networks all use three-layer BP neural network structures, namely an input layer, an output layer and a hidden layer, and the mean square error representing the training performance of the BP neural networks is minimized by adjusting the number of neurons in the hidden layers in the BP neural networks; finally, the mean square deviations of 28 BP neural networks corresponding to 28 training data sets are counted, the smaller the mean square deviation value is, the larger the contribution of the observed bright temperature of the channel corresponding to the mean square deviation to the inversion sea surface air pressure is, and the contributions of the observed bright temperatures of the 28 channels to the inversion sea surface air pressure are sorted according to the order from large to small by taking the magnitude of the mean square deviation as the basis.
Step four: on the basis of the observed bright temperatures of the channels which have the largest contribution to the inversion sea surface air pressure, the observed bright temperatures of the channels are increased one by one according to the sequence that the observed bright temperatures of the 28 channels established in the step three have the smallest contribution to the inversion sea surface air pressure, so as to form the observed bright temperatures of the channel combination; training a BP neural network by taking the observed brightness temperature of the channel combination as input and the corresponding sea surface air pressure as output; and stopping increasing the observed bright temperature of the channel when the mean square error of the BP neural network corresponding to the observed bright temperature of the channel combination is not reduced any more with the increase of the observed bright temperature of the channel, wherein the channel combination at the moment is the optimal channel combination of the MWTS-II and the MWHTS fusion inversion sea surface air pressure.
Step five: and F, inverting the observed brightness temperature of the optimal channel combination obtained in the step four to obtain the sea surface air pressure.
The first step specifically comprises: matching the MWTS-II and the MWHTS observed brightness temperature according to a matching rule that the time error is less than 0.2 s and the longitude and latitude error is less than 0.01 degrees; and performing quality control on the observed bright temperature obtained by matching according to a screening rule with the value of more than 180K and less than 310K to form a MWTS-II and MWHTS bright temperature matching pair.
The second step specifically comprises:
using an European middle-term weather forecast center (ECMWF) to re-analyze the sea surface air pressure in the data set ERA-Interim to be matched with the bright temperature matching pair established in the first step, wherein the matching rule is that the time error is less than 0.5 h and the longitude and latitude error is less than 0.1 degrees, and establishing a matching data set of the bright temperature matching pair of MWTS-II and MWHTS and the sea surface air pressure; randomly selecting 80% of the matched data in the matched data set to form an analysis data set, and remaining 20% of the matched data to form a verification data set.
Example 1
The light temperature was observed using Fengyun three D star MWTS-II and MWHTS, over a time period of 2018 for 9 months to 2019 for 8 months, and over a geographical range of (25 ℃ N-45 ℃ N, 160 ℃ E-220 ℃ E). And matching the MWTS-II and MWHTS observed brightness temperature data according to a matching rule that the time error is less than 0.2 s and the longitude and latitude error is less than 0.01 degrees, then performing quality control on the observed brightness temperature in the matched data according to a screening rule that the observed brightness temperature in the matched data is more than 180K and less than 310K, and if any observed brightness temperature in the matched data is less than 180K or more than 310K, discarding the group of matched data to finally form an MWTS-II and MWHTS brightness temperature matching pair of 1060162 pairs.
The sea surface air pressure in the data set ERA-Interim was re-analyzed using the european mid-range weather forecast center (ECMWF) over a time range of 2018 months to 2019 months 8, a geographic range of (25 ° N-45 ° N, 160 ° E-220 ° E), and a data resolution of 0.5 ° x 0.5 °. Matching the sea surface air pressure with the 1060162 pair brightness temperature matching pair established in the first step, wherein the matching rule is that the time error is less than 0.5 h and the longitude and latitude error is less than 0.1 DEG, and establishing a matching data set (386279 group) of MWTS-II and MWHTS brightness temperature matching pair and sea surface air pressure; randomly selected 80% of the matched data in the matched data set forms the analyzed data set (309023 groups), and the remaining 20% of the matched data forms the verified data set (77256 groups).
Firstly, respectively taking the observed brightness temperature of 13 MWTS-II channels and 15 MWHTS channels in an analysis data set as input, and taking the corresponding sea surface air pressure in the analysis data set as output to form 28 training data sets; then, respectively training the BP neural networks by using 28 training data sets, wherein the 28 BP neural networks all use three-layer BP neural network structures, namely an input layer, an output layer and a hidden layer, and the mean square error representing the training performance of the BP neural networks is minimized by adjusting the number of neurons in the hidden layers in the BP neural networks; finally, the mean square deviations of 28 BP neural networks corresponding to 28 training data sets are counted, the smaller the mean square deviation value is, the larger the contribution of the observed bright temperature of the channel corresponding to the mean square deviation to the inversion sea surface air pressure is, and the contributions of the observed bright temperatures of the 28 channels to the inversion sea surface air pressure are sorted according to the order from large to small by taking the magnitude of the mean square deviation as the basis. The observed light temperatures of the 28 channels contribute to the inverted sea surface barometric pressure as shown in table 1. Wherein each channel of MWTS-II is represented by MWTS-II-n, n =1, 2, 3 … 13; the individual channels of MWHTS are denoted by MWHTS-m, m =1, 2, 3 … 15. The sequence of the contributions of the observed light temperatures of the 28 channels to the inverted sea surface barometric pressure from large to small is shown as the sequence numbers in table 1.
Sequencing the contributions of observed light temperatures of 128 channels to inversion of sea surface barometric pressure
Figure 240429DEST_PATH_IMAGE002
In the analysis data set, based on the observed bright temperatures of the MWTS-II-7 channel which has the largest contribution to the inverted sea surface air pressure, the observed bright temperatures of the 28 channels shown in the table 1 are added one by one according to the sequence number in the table 1 from large to small to form the observed bright temperatures of the channel combination; and training the BP neural network by taking the observed brightness temperature of the channel combination as input and the corresponding sea surface air pressure as output. With the increase of the channels one by one, after the channel combination is added with the channel MWTS-II-13 corresponding to the sequence number 22, the mean square error of the BP neural network trained by the newly formed channel combination observation light temperature is 10.24. When the channel MWHTS-9 corresponding to the sequence number 23 is added to the channel combination, the mean square error of the BP neural network trained by the observed brightness and temperature of the corresponding channel combination is 12.4. After the channels are continuously added according to the serial numbers in table 1, the mean square error of the BP neural network trained by the observed brightness temperature of the corresponding channel combination is continuously increased. Then the channel combinations corresponding to sequence numbers 1-22 in table 1, that is, the channel combinations: the MWTS-II total channel and the MWHTS-3, MWHTS-4, MWHTS-5, MWHTS-7, MWHTS-8, MWHTS-10, MWHTS-13, MWHTS-14 and MWHTS-15 are the optimal channel combination for the fusion inversion of sea surface air pressure by the MWTS-II and the MWHTS.
Respectively using observation bright temperatures corresponding to the combination of the MWHTS all channels, the MWTS-II all channels, the MWHTS all channels, the MWTS-II all channels and the optimal channel in the analysis data set as input, and corresponding sea surface air pressure as output, and training a BP neural network; the observed light temperatures corresponding to the verification data set of all channels of MWHTS, all channels of MWTS-II, and the optimal channel combination are respectively input to the corresponding trained neural network, respectively obtain the inversion values of the corresponding sea surface barometric pressure, and calculate the root mean square error between the sea surface barometric pressure inversion values and the corresponding sea surface barometric pressure values in the verification data set, as shown in fig. 2. As can be seen from FIG. 2, the observed brightness temperature of all channels of the MWHTS in the validation data set inverts the sea surface barometric pressure to an accuracy of 4.69 hPa; verifying that the precision of the observed brightness temperature inversion sea surface air pressure of all channels of the MWTS-II in the data set is 3.92 hPa; when the sea surface air pressure is inverted by using the observed bright temperature of all channels of MWHTS and the observed bright temperature of all channels of MWTS-II in the verification data set, the obtainable precision is 3.73 hPa; when the optimal channel combination established by the method is used for observing the brightness temperature and inverting the sea surface air pressure, the obtainable precision is 3.19 hPa. Although the accuracy of inverting the sea surface pressure by the observed bright temperature of all channels of MWHTS and the observed bright temperature of all channels of MWTS-II can be higher than that of inverting the sea surface pressure by MWHTS or MWTS-II, the accuracy of inverting the sea surface pressure by the observed bright temperature of the optimal channel combination established by the method can be further improved by 0.5 hPa.

Claims (5)

1. A method for inverting sea surface air pressure by fusion of MWTS-II and MWHTS is characterized by comprising the following steps:
the method comprises the following steps: establishing a brightness temperature matching pair of MWTS-II observation brightness temperature and MWHTS observation brightness temperature in time and space;
step two: establishing a matching data set of a bright temperature matching pair and sea surface air pressure in time and space, and dividing the matching data set into an analysis data set and a verification data set;
step three: respectively taking the observed brightness of 13 channels of the MWTS-II in the analysis data set and the observed brightness of 15 channels of the MWHTS as input, taking the sea surface air pressure of the corresponding analysis data set as output, forming 28 training data sets and respectively training a BP neural network, counting the mean square error of each training data set after the BP neural network is trained, and sequencing the contributions of the observed brightness of the 28 channels to the inversion sea surface air pressure from large to small according to the size of the mean square error;
step four: based on the observed bright temperature of the channel which has the largest contribution to the inverted sea surface air pressure, according to the sequence that the observed bright temperatures of 28 channels have the largest contribution to the inverted sea surface air pressure from large to small, the observed bright temperatures of the channels are increased one by one, after the observed bright temperatures of the channels are increased, the observed bright temperature of the formed channel combination is used as the input of a BP neural network, the corresponding sea surface air pressure is used as the output, the BP neural network is trained until the mean square error of the trained BP neural network is not reduced any more, the increase of the observed bright temperatures of the channels is stopped, and the optimal channel combination of the MWTS-II and MWHTS fusion inverted sea surface air pressure is established;
step five: and F, inverting the observed brightness temperature of the optimal channel combination obtained in the step four to obtain the sea surface air pressure.
2. The method for inverting sea surface air pressure by fusion of MWTS-II and MWHTS according to claim 1, wherein: matching the MWTS-II and the MWHTS observed brightness temperature according to a matching rule that the time error is less than 0.2 s and the longitude and latitude error is less than 0.01 degrees; and performing quality control on the observed bright temperature obtained by matching according to a screening rule with the value of more than 180K and less than 310K to form a MWTS-II and MWHTS bright temperature matching pair.
3. The method for inverting sea surface air pressure by fusion of MWTS-II and MWHTS according to claim 1, wherein: and (3) matching the sea surface air pressure with the bright temperature matching pair established in the first step, wherein the matching rule is that the time error is less than 0.5 h and the longitude and latitude error is less than 0.1 DEG, and establishing a matching data set of the bright temperature matching pair of MWTS-II and MWHTS and the sea surface air pressure.
4. The method for inverting sea surface air pressure by fusion of MWTS-II and MWHTS according to claim 1, wherein: randomly selecting 80% of the matched data in the matched data set to form an analysis data set, and remaining 20% of the matched data to form a verification data set.
5. The method for inverting sea surface air pressure by fusion of MWTS-II and MWHTS according to claim 1, wherein said fourth step specifically comprises:
on the basis of the observed bright temperatures of the channels which have the largest contribution to the inversion sea surface air pressure, the observed bright temperatures of the channels are increased one by one according to the sequence that the observed bright temperatures of the 28 channels established in the step three have the smallest contribution to the inversion sea surface air pressure, so as to form the observed bright temperatures of the channel combination; training a BP neural network by taking the observed brightness temperature of the channel combination as input and the corresponding sea surface air pressure as output; and stopping increasing the observed bright temperature of the channel when the mean square error of the BP neural network corresponding to the observed bright temperature of the channel combination is not reduced any more with the increase of the observed bright temperature of the channel, wherein the channel combination at the moment is the optimal channel combination of the MWTS-II and the MWHTS fusion inversion sea surface air pressure.
CN202011104191.8A 2020-10-15 2020-10-15 Method for inverting sea surface air pressure by fusion of MWTS-II and MWHTS Active CN112254866B (en)

Priority Applications (1)

Application Number Priority Date Filing Date Title
CN202011104191.8A CN112254866B (en) 2020-10-15 2020-10-15 Method for inverting sea surface air pressure by fusion of MWTS-II and MWHTS

Applications Claiming Priority (1)

Application Number Priority Date Filing Date Title
CN202011104191.8A CN112254866B (en) 2020-10-15 2020-10-15 Method for inverting sea surface air pressure by fusion of MWTS-II and MWHTS

Publications (2)

Publication Number Publication Date
CN112254866A true CN112254866A (en) 2021-01-22
CN112254866B CN112254866B (en) 2022-08-02

Family

ID=74242328

Family Applications (1)

Application Number Title Priority Date Filing Date
CN202011104191.8A Active CN112254866B (en) 2020-10-15 2020-10-15 Method for inverting sea surface air pressure by fusion of MWTS-II and MWHTS

Country Status (1)

Country Link
CN (1) CN112254866B (en)

Cited By (1)

* Cited by examiner, † Cited by third party
Publication number Priority date Publication date Assignee Title
CN113822345A (en) * 2021-09-09 2021-12-21 南京中科逆熵科技有限公司 Method and system for inverting cloud water content by fusing MWHTS and MWTS-II

Citations (9)

* Cited by examiner, † Cited by third party
Publication number Priority date Publication date Assignee Title
US20060164063A1 (en) * 2005-01-24 2006-07-27 Radiometrics Corporation Atmospheric refractivity profiling apparatus and methods
CN102589714A (en) * 2012-02-23 2012-07-18 南昌航空大学 Temperature measuring device based on high-pressure gas Rayleigh-Brillouin scattering spectrum
US20160123943A1 (en) * 2013-06-05 2016-05-05 Institute of Microelectronics, Chinese Academy of Sciences Gas recognition method based on compressive sensing theory
CN107870043A (en) * 2017-10-25 2018-04-03 中国科学院国家空间科学中心 A kind of extra large table parameter synchronization inverting optimization method
CN108051872A (en) * 2017-12-13 2018-05-18 湖北省气象服务中心(湖北省专业气象服务台) Method and apparatus based on steam phase transition process in Ground-Based Microwave Radiometer Retrieval of Cloud
CN108827878A (en) * 2018-04-08 2018-11-16 中国科学院国家空间科学中心 A kind of passive microwave remote sensing detection method of earth's surface air pressure
CN109580003A (en) * 2018-12-18 2019-04-05 成都信息工程大学 A kind of stationary weather satellite Thermal Infrared Data estimation Air Close To The Earth Surface temperature methods
CN110826693A (en) * 2019-10-29 2020-02-21 华中科技大学 Three-dimensional atmospheric temperature profile inversion method and system based on DenseNet convolutional neural network
CN111651934A (en) * 2020-05-25 2020-09-11 华中科技大学 Ice cloud profile inversion method

Patent Citations (9)

* Cited by examiner, † Cited by third party
Publication number Priority date Publication date Assignee Title
US20060164063A1 (en) * 2005-01-24 2006-07-27 Radiometrics Corporation Atmospheric refractivity profiling apparatus and methods
CN102589714A (en) * 2012-02-23 2012-07-18 南昌航空大学 Temperature measuring device based on high-pressure gas Rayleigh-Brillouin scattering spectrum
US20160123943A1 (en) * 2013-06-05 2016-05-05 Institute of Microelectronics, Chinese Academy of Sciences Gas recognition method based on compressive sensing theory
CN107870043A (en) * 2017-10-25 2018-04-03 中国科学院国家空间科学中心 A kind of extra large table parameter synchronization inverting optimization method
CN108051872A (en) * 2017-12-13 2018-05-18 湖北省气象服务中心(湖北省专业气象服务台) Method and apparatus based on steam phase transition process in Ground-Based Microwave Radiometer Retrieval of Cloud
CN108827878A (en) * 2018-04-08 2018-11-16 中国科学院国家空间科学中心 A kind of passive microwave remote sensing detection method of earth's surface air pressure
CN109580003A (en) * 2018-12-18 2019-04-05 成都信息工程大学 A kind of stationary weather satellite Thermal Infrared Data estimation Air Close To The Earth Surface temperature methods
CN110826693A (en) * 2019-10-29 2020-02-21 华中科技大学 Three-dimensional atmospheric temperature profile inversion method and system based on DenseNet convolutional neural network
CN111651934A (en) * 2020-05-25 2020-09-11 华中科技大学 Ice cloud profile inversion method

Non-Patent Citations (2)

* Cited by examiner, † Cited by third party
Title
贺秋瑞: "FY-3C卫星微波湿温探测仪反演大气温湿廓线研究", 《中国优秀博硕士学位论文全文数据库(博士)基础科学辑》 *
陈昊 等: "风云三号MWTS/MWHS大气温度与水汽廓线反演", 《遥感学报》 *

Cited By (2)

* Cited by examiner, † Cited by third party
Publication number Priority date Publication date Assignee Title
CN113822345A (en) * 2021-09-09 2021-12-21 南京中科逆熵科技有限公司 Method and system for inverting cloud water content by fusing MWHTS and MWTS-II
CN113822345B (en) * 2021-09-09 2024-03-29 南京中科逆熵科技有限公司 Method and system for inverting cloud water content by fusing MWHTS and MWTS-II

Also Published As

Publication number Publication date
CN112254866B (en) 2022-08-02

Similar Documents

Publication Publication Date Title
Tan et al. Long-range transport of spring dust storms in Inner Mongolia and impact on the China seas
CN109446739B (en) Surface temperature multi-channel thermal infrared remote sensing inversion method
CN111737913B (en) MWHTS clear sky observation bright temperature selection method based on cloud water content inversion
CN108827878B (en) Passive microwave remote sensing detection method for surface air pressure
CN110826693B (en) Three-dimensional atmospheric temperature profile inversion method and system based on DenseNet convolutional neural network
CN111737912B (en) MWHTS (metal wrap through) simulated bright temperature calculation method based on deep neural network
CN101936877A (en) Method for inverting atmospheric water vapor content from MODIS (Moderate Resolution Imaging Spectroradiometer) data
CN111737641B (en) MWHTS channel weight function calculation method based on neural network
CN112254866B (en) Method for inverting sea surface air pressure by fusion of MWTS-II and MWHTS
CN109143408A (en) Combine short-term precipitation forecasting procedure in dynamic area based on MLP
CN113177512A (en) Matching threshold analysis method for intersatellite cross radiometric calibration
CN112329334B (en) MWHTS and MWTS-II fusion inversion sea surface air pressure method based on simulated bright temperature
CN101655564A (en) Method for inversing surface temperature and emissivity from MODIS data
Zhang et al. Methane retrieval from Atmospheric Infrared Sounder using EOF-based regression algorithm and its validation
CN110991087A (en) Wind field inversion method and system based on multi-incidence-angle networking SAR satellite data
CN102495943B (en) Modeling method for geophysical model
Niu et al. Performances between the FY‐4A/GIIRS and FY‐4B/GIIRS long‐wave infrared (LWIR) channels under clear‐sky and all‐sky conditions
Tian et al. Cloud detection and classification for S-NPP FSR CRIS data using supervised machine learning
CN117172149A (en) Evaporation waveguide prediction method based on data feature classification and neural network model
CN113311509B (en) Sensitivity test method of MWHTS (metal wrap through) to sea surface air pressure based on neural network
CN112345151B (en) Sensitivity test method of MWTS-II to sea surface air pressure based on natural atmosphere
AU2021105233A4 (en) Method of Retrieving Surface Temperature from Passive Microwave Remote Sensing Data AMSR E
CN114970663A (en) Near-shore sea surface temperature inversion method of microwave radiometer based on neural network
Guo et al. Near-surface air temperature retrieval from Chinese Geostationary FengYun Meteorological Satellite (FY-2C) data
CN113822345A (en) Method and system for inverting cloud water content by fusing MWHTS and MWTS-II

Legal Events

Date Code Title Description
PB01 Publication
PB01 Publication
SE01 Entry into force of request for substantive examination
SE01 Entry into force of request for substantive examination
GR01 Patent grant
GR01 Patent grant