TW202421323A - Artificial intelligence (ai) desoldering device for laser removal of substrate resist layers - Google Patents

Artificial intelligence (ai) desoldering device for laser removal of substrate resist layers Download PDF

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TW202421323A
TW202421323A TW112136044A TW112136044A TW202421323A TW 202421323 A TW202421323 A TW 202421323A TW 112136044 A TW112136044 A TW 112136044A TW 112136044 A TW112136044 A TW 112136044A TW 202421323 A TW202421323 A TW 202421323A
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substrate
laser
solder mask
artificial intelligence
solder
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TW112136044A
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Chinese (zh)
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逄培忠
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精捷科技光學股份有限公司
逄培忠
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Abstract

An artificial intelligence (AI) desoldering device for laser removal of substrate resist layers includes an AI system, a control processing module, a camera module, and a laser desoldering module. The AI system includes a database unit, a learning and training unit, a parameter setting optimization unit, a condition limiting unit, and an AI model processing unit. The AI system is used to learn and pre-train the type of substrates, the size of substrate, the thickness of substrate, the color of solder masks, the thickness of solder masks, and the depth of the area around soldering pads, and automatically optimize and set up all processing parameters according to the characteristics of the substrates to be processed. The laser desoldering module is controlled by the AI system to perform laser desoldering on the substrates according to a first control command and a circuit layout diagram.

Description

以人工智慧驅動的雷射移除基板防焊層的智能除焊裝置Intelligent desoldering device that uses artificial intelligence-driven laser to remove solder mask from substrates

一種基板除焊裝置,尤指一種以人工智慧驅動的雷射移除基板防焊層的智能除焊裝置。A substrate desoldering device, in particular, an intelligent desoldering device that removes a substrate solder mask layer by using an artificial intelligence driven laser.

按,一般電路基板之防焊製程,通常係於印刷線路完成設置後,再以感光型防焊劑塗佈於電路基板表面形成防焊層,預烤至半固化,續利用光罩進行曝光顯影技術,使防焊層正對於線路中焊墊以外之部分固化,再將防焊層未固化之部分去除,使焊墊露出防焊層。由於曝光能量和顯影產生的必須誤差,使精度受限,和焊墊距離(pitch)無法縮小;另有直接成像技術引進,雖減免光罩成本,但是設備成本極高,技術上亦是面臨同樣問題。According to the general solder mask process of circuit boards, after the printed circuit is set up, a photosensitive solder mask is applied to the surface of the circuit board to form a solder mask layer, which is pre-baked to semi-cured, and then exposed and developed using a mask to cure the solder mask layer outside the solder pad in the circuit, and then remove the uncured part of the solder mask layer to expose the solder mask layer on the solder pad. Due to the necessary errors caused by exposure energy and development, the accuracy is limited, and the solder pad distance (pitch) cannot be reduced; there is also the introduction of direct imaging technology, which reduces the cost of masks, but the equipment cost is extremely high, and the technology also faces the same problem.

然而,電路基板及光罩會被曝光裝置的曝光部內的溫度、濕度等環境條件影響,讓電路基板及光罩上的定位標記之位置精度及曝光圖案之位置精度等產生變化,會有無法形成高精度圖案的問題,使焊墊無法正確的露出防焊層之問題產生。再者,不同焊墊位置之電路基板,皆須先製作出符合該電路基板之光罩,使電路基板之製作成本提高。此外,一般電路基板之防焊製程常須要使用不同的油墨,使得油墨成本高昂。且,半固化之防焊硬度不足或有黏性,容易在作業中造成報廢。However, the circuit substrate and the photomask will be affected by the environmental conditions such as temperature and humidity in the exposure part of the exposure device, which will cause changes in the position accuracy of the positioning marks on the circuit substrate and the photomask and the position accuracy of the exposure pattern, and there will be problems such as the inability to form high-precision patterns, and the solder pads cannot correctly expose the solder mask. Furthermore, circuit substrates with different solder pad positions must first be made with masks that match the circuit substrates, which increases the manufacturing cost of the circuit substrates. In addition, the solder mask process of general circuit substrates often requires the use of different inks, making the ink cost high. Moreover, the semi-cured solder mask is not hard enough or is sticky, which is easy to cause scrap during operation.

是以,如何解決上述現有技術之問題與缺失,即為相關業者所亟欲研發之課題所在。Therefore, how to solve the above problems and deficiencies of the existing technology is an urgent research topic for relevant industries.

本發明提供一種以人工智慧驅動的雷射移除基板防焊層的智能除焊裝置,係以透過可控制能量之雷射來對安置於一雷射加工機台之至少一基板進行加工作業,每一該基板對應於一板件生產料號,並且該基板表面設置有至少一焊墊並且於該基板與該焊墊表面覆蓋一防焊層,其中該防焊層正對該基板表面處為一遮蔽部,且該防焊層正對於該焊墊處為一清除部,該以人工智慧驅動的雷射移除基板防焊層的智能除焊裝置包括人工智慧(AI)系統、控制處理模組、攝影取像模組與雷射除焊模組。人工智慧系統包括資料庫單元、學習且訓練單元、參數優化設定單元、條件限制單元與AI模型處理單元。人工智慧(AI)系統,用以對該些基板之種類、該些基板之尺寸、該些基板之厚度、該防焊層之顏色、該防焊層之厚度與該些焊墊周圍之深度進行學習與預訓練,且根據待加工之該基板之特性來自動對全部的加工參數進行優化設定。資料庫單元,其具有該些基板之種類、該些基板之尺寸、該些基板之厚度、該防焊層之顏色、該防焊層之厚度與該些焊墊周圍之深度之相關數據資料,其中該資料庫單元透過網際網路連接至一雲端平台來線上更新相關數據資料。學習且訓練單元,其連接至該資料庫單元,該學習且訓練單元透過基板深度學習演算法且根據該資料庫單元內的相關數據資料來進行學習與預訓練。參數優化設定單元,其連接至該資料庫單元,該參數優化設定單元用以根據該些該些基板之種類、該些基板之尺寸、該些基板之厚度、該防焊層之顏色、該防焊層之厚度與該些焊墊周圍之深度之相關數據資料來進行多個加工參數的優化設定。條件限制單元連接至該學習且訓練單元,該條件限制單元用以透過設定多個條件來限制該人工智慧(AI)系統之學習偏差。AI模型處理單元,其連接至該學習且訓練單元與該參數優化設定單元,該AI模型處理單元透過該學習且訓練單元來對一AI模型進行學習與訓練,其中該AI模型處理單元為該人工智慧系統之AI大腦。控制處理模組,其連接至該人工智慧系統之該AI模型處理單元,該控制處理模組根據AI模型處理單元所傳送之指令及相關數據來產生一第一控制指令、一第二控制指令與一第三控制指令,以對該基板進行加工作業。攝影取像模組,其連接至該控制處理模組,該攝影取像模組根據該控制處理模組所傳送之該第一控制指令來對該基板進行攝影或取像,其中該攝影取像模組讀取該基板上之該板件生產料號之快速響應矩陣圖,並且回傳至該AI模型處理單元以辨別該基板特性,且進行參數優化設定之加工前準備。雷射除焊模組,其連接至該控制處理模組,該雷射除焊模組根據該控制處理模組所傳送之該第一控制指令與一電路佈局圖來對該基板進行雷射除焊。該雷射除焊模組透過一雷射光束且根據一施工圖形來對該清除部進行剝除作業,以使該防焊層形成至少一鏤空部,其中該電路佈局圖導入該防焊層之資料,再將該防焊層之資料做成正片影像、負片影像或圖形轉檔處理,以取得該施工圖形。The present invention provides an intelligent desoldering device for removing a substrate solder mask layer by laser driven by artificial intelligence. The device processes at least one substrate placed on a laser processing machine by laser with controllable energy. Each substrate corresponds to a board production material number, and at least one solder pad is disposed on the surface of the substrate, and a solder mask is covered on the surface of the substrate and the solder pad, wherein the solder mask is a shielding portion facing the substrate surface, and the solder mask is a cleaning portion facing the solder pad. The intelligent desoldering device for removing a substrate solder mask layer by laser driven by artificial intelligence includes an artificial intelligence (AI) system, a control processing module, a photographic imaging module, and a laser desoldering module. The artificial intelligence system includes a database unit, a learning and training unit, a parameter optimization setting unit, a condition restriction unit and an AI model processing unit. The artificial intelligence (AI) system is used to learn and pre-train the types of the substrates, the sizes of the substrates, the thickness of the substrates, the color of the solder mask, the thickness of the solder mask and the depth around the pads, and automatically optimize all processing parameters according to the characteristics of the substrate to be processed. The database unit has relevant data on the types of the substrates, the sizes of the substrates, the thickness of the substrates, the color of the solder mask, the thickness of the solder mask and the depth around the pads, wherein the database unit is connected to a cloud platform via the Internet to update the relevant data online. A learning and training unit is connected to the database unit, and the learning and training unit performs learning and pre-training through a substrate deep learning algorithm and according to relevant data in the database unit. A parameter optimization setting unit is connected to the database unit, and the parameter optimization setting unit is used to optimize the settings of multiple processing parameters according to relevant data of the types of the substrates, the sizes of the substrates, the thickness of the substrates, the color of the solder mask, the thickness of the solder mask, and the depth around the solder pads. A condition restriction unit is connected to the learning and training unit, and the condition restriction unit is used to limit the learning deviation of the artificial intelligence (AI) system by setting multiple conditions. The AI model processing unit is connected to the learning and training unit and the parameter optimization setting unit. The AI model processing unit learns and trains an AI model through the learning and training unit, wherein the AI model processing unit is the AI brain of the artificial intelligence system. The control processing module is connected to the AI model processing unit of the artificial intelligence system. The control processing module generates a first control instruction, a second control instruction and a third control instruction according to the instructions and related data transmitted by the AI model processing unit to perform processing operations on the substrate. A photographic imaging module is connected to the control processing module. The photographic imaging module photographs or captures the substrate according to the first control instruction transmitted by the control processing module, wherein the photographic imaging module reads the rapid response matrix of the board production material number on the substrate, and transmits it back to the AI model processing unit to identify the characteristics of the substrate and perform pre-processing preparation for parameter optimization settings. A laser desoldering module is connected to the control processing module. The laser desoldering module performs laser desoldering on the substrate according to the first control instruction transmitted by the control processing module and a circuit layout diagram. The laser desoldering module removes the removal portion through a laser beam according to a construction drawing to form at least one hollow portion in the solder mask layer, wherein the circuit layout diagram imports the data of the solder mask layer, and then the data of the solder mask layer is processed into a positive image, a negative image or a graphic conversion to obtain the construction drawing.

在本發明之一實施例中,該人工智慧(AI)系統根據加工路徑、該施工圖形與材質所需能量大小,來預判或調整雷射光斑大小與形狀。In one embodiment of the present invention, the artificial intelligence (AI) system predicts or adjusts the laser spot size and shape according to the processing path, the construction pattern and the energy required by the material.

在本發明之一實施例中,該人工智慧(AI)系統根據運算後的結果來透過該參數優化設定單元,對該基板之同一板面的不同區域調整不同的雷射光斑大小與不同的雷射發數。In one embodiment of the present invention, the artificial intelligence (AI) system adjusts different laser spot sizes and different laser firing numbers for different areas of the same surface of the substrate through the parameter optimization setting unit according to the calculated results.

在本發明之一實施例中,以人工智慧驅動的雷射移除基板防焊層的智能除焊裝置更包括對位模組。對位模組連接至該控制處理模組,該對位模組根據該控制處理模組所傳送之一第三控制指令且透過一紅外光來對待加工之該基板進行對位,以進一步調整該施工圖形之漲縮幅度,其中該紅外光用以透視防焊層,其中透過該人工智慧(AI)系統分析且排除不適合之對位點圖像,並且計算該基板之變形方向與程度。In one embodiment of the present invention, the intelligent solder removal device for removing the solder mask layer of the substrate by laser driven by artificial intelligence further includes an alignment module. The alignment module is connected to the control processing module, and the alignment module aligns the substrate to be processed according to a third control instruction transmitted by the control processing module and through an infrared light to further adjust the increase and decrease amplitude of the construction pattern, wherein the infrared light is used to see through the solder mask layer, wherein the artificial intelligence (AI) system analyzes and excludes inappropriate alignment point images, and calculates the deformation direction and degree of the substrate.

在本發明之一實施例中,該基板之周圍四個角落分別具有一對位點。In one embodiment of the present invention, the four corners around the substrate each have a pair of points.

在本發明之一實施例中,該基板之周圍四個角落分別具有一對位點且該基板之中央區域具有至少兩個對位點。In one embodiment of the present invention, the four corners of the substrate each have a pair of alignment points and the central area of the substrate has at least two alignment points.

在本發明之一實施例中,在取得該施工圖形後,該控制處理模組根據該雷射除焊模組之雷射光點大小與能量來計算雷射光點的重疊面積大小後,轉譯出一雷射點陣圖。In one embodiment of the present invention, after obtaining the construction pattern, the control processing module calculates the overlapping area size of the laser spot according to the laser spot size and energy of the laser desoldering module, and then translates it into a laser dot matrix.

在本發明之一實施例中,透過該攝影取像模組對該基板進行攝影且取出一基板加工圖片,並且比對且判斷該基板加工圖片與該電路佈局圖是否相同,如果相同,則完成基板加工作業。In one embodiment of the present invention, the substrate is photographed by the photographing and imaging module to obtain a substrate processing picture, and the substrate processing picture is compared and judged to see whether it is the same as the circuit layout diagram. If they are the same, the substrate processing operation is completed.

在本發明之一實施例中,在比對且判斷該基板加工圖片與該電路佈局圖是否相同之步驟中,如果不相同,則該雷射光束針對不相同之處再對該清除部進行剝除作業。In one embodiment of the present invention, in the step of comparing and determining whether the substrate processing image is identical to the circuit layout image, if they are not identical, the laser beam performs a stripping operation on the cleaning portion at the different locations.

在本發明之一實施例中,透過該電路佈局圖將該基板區分為多個待加工區域,再由該雷射光束依照一預設定規則對每一該些待加工區域之該清除部進行剝除作業。In one embodiment of the present invention, the substrate is divided into a plurality of areas to be processed by the circuit layout diagram, and then the laser beam performs a stripping operation on the clearing portion of each of the areas to be processed according to a preset rule.

在本發明之一實施例中,該雷射光束所發射出之雷射光為毫秒級以上的高頻雷射光束。In one embodiment of the present invention, the laser light emitted by the laser beam is a high-frequency laser beam above the millisecond level.

在本發明之一實施例中,該雷射光束之種類依據材質的特性採用二氧化碳(CO2) 雷射、雅鉻(Yag)雷射、綠光雷射與紫外光的至少其中之一,以達到清除防焊又無殘留或碳化的效果。In one embodiment of the present invention, the type of the laser beam is at least one of carbon dioxide (CO2) laser, Yag laser, green laser and ultraviolet light according to the characteristics of the material, so as to achieve the effect of removing solder mask without residue or carbonization.

在本發明之一實施例中,該雷射除焊模組具有多組雷射光源來各自發出該雷射光束,其分別根據該第一控制指令與該電路佈局圖來對該基板之該清除部進行剝除作業,其中每一雷射光源所負責之區域為不同。In one embodiment of the present invention, the laser desoldering module has multiple sets of laser light sources to emit the laser beam respectively, which respectively perform the stripping operation on the cleaning part of the substrate according to the first control instruction and the circuit layout diagram, wherein each laser light source is responsible for a different area.

綜上所述,本發明所揭露之以人工智慧驅動的雷射移除基板防焊層的智能除焊裝置能夠達到以下功效: 1. 大幅縮短加工製程之步驟; 2. 提昇製程良率; 3. 具有可控制能量之雷射光束; 4. 提高加工製程的圖案精度; 5. 不同焊墊位置之電路基板,皆不再須要先製作出符合電路基板之光罩; 6. 不會有溫度、濕度等環境條件之影響; 7. 不用顯影以大幅減少廢水污染,同時節省能源; 8. 不限油墨,油墨成本降低; 9. 採用二氧化碳(CO2) 雷射、雅鉻(Yag)雷射、綠光雷射與紫外光的至少其中之一,達到清除防焊又無殘留或碳化的效果; 10. 解決先前技術中關於半固化之防焊硬度不足或有黏性,容易在作業中造成報廢的問題;以及 11. 減少環境傷害,合乎ESG標準,有助於永續發展 In summary, the intelligent solder removal device for removing the solder mask layer of the substrate by laser driven by artificial intelligence disclosed in the present invention can achieve the following effects: 1. Greatly shorten the steps of the processing process; 2. Improve the process yield; 3. Have a laser beam with controllable energy; 4. Improve the pattern accuracy of the processing process; 5. Circuit substrates with different solder pad positions no longer need to be made into masks that meet the circuit substrates in advance; 6. There will be no influence of environmental conditions such as temperature and humidity; 7. No need for development to greatly reduce wastewater pollution and save energy at the same time; 8. No limit on ink, ink cost is reduced; 9. Use carbon dioxide (CO2) At least one of laser, Yag laser, green laser and ultraviolet light can be used to remove solder mask without residue or carbonization; 10. Solve the problem of semi-cured solder mask being insufficient in hardness or sticky, which is easy to cause scrapping during operation; and 11. Reduce environmental damage, meet ESG standards, and contribute to sustainable development

底下藉由具體實施例詳加說明,當更容易瞭解本發明之目的、技術內容、特點及其所達成之功效。The following detailed description is based on specific embodiments to make it easier to understand the purpose, technical content, features and effects of the present invention.

為能解決現有電路基板之防焊製程的諸多問題,發明人經過多年的研究及開發,據以改善現有產品的詬病,後續將詳細介紹本發明如何以一種以人工智慧驅動的雷射移除基板防焊層的智能除焊裝置來達到最有效率的功能訴求。再者,本揭露內容為避免傳統化學製程顯影不淨,以及傳統雷射燒蝕因熱效應產生積碳殘留,必須二次加工或直接導致報廢。In order to solve the many problems of the existing solder mask process of circuit substrates, the inventor has improved the shortcomings of existing products after years of research and development. The following will introduce in detail how the invention uses an intelligent solder removal device that removes the solder mask layer of the substrate driven by artificial intelligence to achieve the most efficient functional requirements. In addition, the disclosure content is to avoid the traditional chemical process development is not clean, and the traditional laser ablation due to thermal effects to produce carbon residues, which must be secondary processing or directly lead to scrap.

請同時參考第一圖至第三圖、第六圖與第七圖、第九圖,第一圖係為以人工智慧驅動的雷射移除基板防焊層的智能除焊裝置之架構圖。第二圖係為本發明的基板之側視圖。第三圖係為本發明的基板覆蓋防焊層之側視圖。第六圖係為本發明的智能除焊裝置對基板進行加工之立體示意圖。第七圖係為本發明的攝影取像模組對基板進行取像之示意圖。第九圖係為本發明的轉譯出雷射點陣圖之示意圖。如第一圖所示,人工智慧驅動的雷射移除基板防焊層的智能除焊裝置100係以透過可控制能量之雷射來對一基板之全部或部分進行加工製程作業,而非只是透過人工使用雷射來進行電路基板局部或單點的優化,本發明實施例中主要透過人工智慧驅動的雷射移除基板防焊層的智能除焊裝置100來取代先前技術下繁雜流程與減少環境汙染,符合ESG標準,ESG分別是環境保護(E,Environmental)、社會責任(S,Social)以及公司治理(G,governance)的縮寫。Please refer to Figures 1 to 3, 6, 7, and 9 simultaneously. Figure 1 is a schematic diagram of the structure of an intelligent desoldering device that uses an artificial intelligence-driven laser to remove the solder mask layer of a substrate. Figure 2 is a side view of a substrate of the present invention. Figure 3 is a side view of a substrate covered with a solder mask layer of the present invention. Figure 6 is a three-dimensional schematic diagram of the intelligent desoldering device of the present invention processing a substrate. Figure 7 is a schematic diagram of the photographic imaging module of the present invention capturing an image of a substrate. Figure 9 is a schematic diagram of the translated laser dot matrix of the present invention. As shown in the first figure, the intelligent desoldering device 100 driven by artificial intelligence for removing the solder mask of the substrate by laser is used to perform processing operations on all or part of a substrate through a laser with controllable energy, rather than just manually using lasers to optimize a part or a single point of the circuit substrate. In the embodiment of the present invention, the intelligent desoldering device 100 driven by artificial intelligence for removing the solder mask of the substrate by laser is mainly used to replace the complicated processes under the previous technology and reduce environmental pollution, which complies with the ESG standard. ESG is the abbreviation of environmental protection (E, Environmental), social responsibility (S, Social) and corporate governance (G, governance).

如圖所示,本發明之以人工智慧驅動的雷射移除基板防焊層的智能除焊裝置100,係以透過可控制能量之雷射來對安置於一雷射加工機台MT之至少一基板200進行加工作業,每一該基板200對應於一板件生產料號,並且該基板200表面設置有至少一焊墊210並且於該基板200與該焊墊210表面覆蓋一防焊層220 (例如綠漆),其中該防焊層220正對該基板200表面處為一遮蔽部222,且該防焊層220正對於該焊墊210處為一清除部224。詳細來說,以人工智慧驅動的雷射移除基板防焊層的智能除焊裝置100包括人工智慧(AI)系統110、控制處理模組120、攝影取像模組130與雷射除焊模組140。人工智慧系統110包括資料庫單元111、學習且訓練單元112、參數優化設定單元113、條件限制單元114與AI模型處理單元115。人工智慧(AI)系統110主要用以對該些基板200之種類、該些基板200之尺寸、該些基板200之厚度、該防焊層220之顏色、該防焊層220之厚度與該些焊墊210周圍之深度進行學習與預訓練,且根據待加工之該基板200之特性來自動對全部的加工參數進行優化設定。資料庫單元111具有該些基板200之種類、該些基板200之尺寸、該些基板200之厚度、該防焊層220之顏色、該防焊層220之厚度與該些焊墊210周圍之深度之相關數據資料,其中該資料庫單元111會一無線網路單元(圖未示)連接至網際網路NT且進一步連接至一雲端平台300來線上更新相關數據資料或基板深度學習演算法(給學習且訓練單元112使用)。As shown in the figure, the intelligent solder removal device 100 of the present invention that uses artificial intelligence driven laser to remove the solder mask layer of the substrate is to process at least one substrate 200 placed on a laser processing machine MT through a laser with controllable energy. Each substrate 200 corresponds to a board production material number, and at least one solder pad 210 is provided on the surface of the substrate 200, and a solder mask 220 (such as green paint) is covered on the surface of the substrate 200 and the solder pad 210, wherein the solder mask 220 is a shielding portion 222 facing the surface of the substrate 200, and the solder mask 220 is a cleaning portion 224 facing the solder pad 210. In detail, the intelligent solder removal device 100 for removing the solder mask of the substrate by laser driven by artificial intelligence includes an artificial intelligence (AI) system 110, a control processing module 120, a photographic imaging module 130 and a laser solder removal module 140. The artificial intelligence system 110 includes a database unit 111, a learning and training unit 112, a parameter optimization setting unit 113, a condition restriction unit 114 and an AI model processing unit 115. The artificial intelligence (AI) system 110 is mainly used to learn and pre-train the types of the substrates 200, the sizes of the substrates 200, the thickness of the substrates 200, the color of the solder mask 220, the thickness of the solder mask 220, and the depth around the pads 210, and automatically optimize all processing parameters according to the characteristics of the substrate 200 to be processed. The database unit 111 has relevant data on the types of the substrates 200, the sizes of the substrates 200, the thickness of the substrates 200, the color of the solder mask 220, the thickness of the solder mask 220 and the depth around the pads 210, wherein the database unit 111 is connected to the Internet NT through a wireless network unit (not shown) and further connected to a cloud platform 300 to update relevant data or substrate deep learning algorithms online (for use by the learning and training unit 112).

再者,學習且訓練單元112連接至該資料庫單元111,該學習且訓練單元112透過基板深度學習演算法且根據該資料庫單元111內的相關數據資料來進行學習與預訓練(pre-training),以辨別不同的基板特性需要哪一種加工參數的設定,以用來進行雷射除焊。參數優化設定單元113連接至該資料庫單元111,該參數優化設定單元113用以根據該些該些基板200之種類、該些基板200之尺寸、該些基板200之厚度、該防焊層220之顏色、該防焊層220之厚度與該些焊墊210周圍之深度之相關數據資料來進行多個加工參數的優化設定。條件限制單元114連接至該學習且訓練單元112,該條件限制單元114用以透過設定多個條件來限制該人工智慧(AI)系統之學習偏差或操作誤區,設計者可以依據實際需求來將至少一條件導入至條件限制單元114。AI模型處理單元115連接至該學習且訓練單元112與該參數優化設定單元113,該AI模型處理單元115透過該學習且訓練單元112來對AI模型進行學習與訓練,其中該AI模型處理單元115為該人工智慧系統110之AI大腦,此時AI模型處理單元115已被眾多的數據資料或實務運作的大數據給預訓練完成,所以可以根據不同的基板特性來給出最佳化的設定,所以只要在任何操作前或任何製程參數的輸入,都要先經過AI模型處理單元115的分析、判斷與決策,以避免人工輸入錯誤或後端的雷射設備運作錯誤。Furthermore, the learning and training unit 112 is connected to the database unit 111. The learning and training unit 112 performs learning and pre-training based on the relevant data in the database unit 111 through a substrate deep learning algorithm to identify which processing parameter settings are required for different substrate characteristics for laser desoldering. The parameter optimization setting unit 113 is connected to the database unit 111. The parameter optimization setting unit 113 is used to optimize the setting of multiple processing parameters according to the relevant data of the types of the substrates 200, the sizes of the substrates 200, the thickness of the substrates 200, the color of the solder mask 220, the thickness of the solder mask 220 and the depth around the pads 210. The condition restriction unit 114 is connected to the learning and training unit 112. The condition restriction unit 114 is used to limit the learning deviation or operation error of the artificial intelligence (AI) system by setting multiple conditions. The designer can introduce at least one condition into the condition restriction unit 114 according to actual needs. The AI model processing unit 115 is connected to the learning and training unit 112 and the parameter optimization setting unit 113. The AI model processing unit 115 learns and trains the AI model through the learning and training unit 112, wherein the AI model processing unit 115 is the AI brain of the artificial intelligence system 110. At this time, the AI model processing unit 115 has been pre-trained by a large amount of data or big data of practical operations, so it can provide optimized settings according to different substrate characteristics. Therefore, before any operation or input of any process parameters, it must first be analyzed, judged and decided by the AI model processing unit 115 to avoid manual input errors or back-end laser equipment operation errors.

此外,在本發明中,控制處理模組120連接至該人工智慧系統110之該AI模型處理單元115,該控制處理模組120根據AI模型處理單元115所傳送之智能控制指令ACS及相關數據來產生一第一控制指令CS1、一第二控制指令CS2與一第三控制指令CS3,以對該基板200進行加工作業。須注意的是,智能控制指令ACS包括經過AI模型處理單元115計算且優化過的多個加工參數,以及最佳施工路經與施工規則,也就是說AI模型處理單元115會指揮控制處理模組120如何去控制攝影取像模組130、雷射除焊模組140與對位模組150之一切運作。攝影取像模組130連接至該控制處理模組120,該攝影取像模組130根據該控制處理模組120所傳送之該第一控制指令CS1來對該基板200進行攝影或取像,控制處理模組120會透過攝影取像模組130對基板200進行攝影且取出基板加工圖片,其中攝影取像模組130之數量不限於一個。攝影取像模組130可以對基板200之其中一個單位或已加工區域進行攝影且取出照片,也可以對整體基板200進行攝影且取出照片,這會根據預設定規則來進行。再者,該攝影取像模組130讀取該基板200上之該板件生產料號之快速響應矩陣圖,並且回傳至該AI模型處理單元115以辨別該基板200的特性,且進行參數優化設定之加工前準備。In addition, in the present invention, the control processing module 120 is connected to the AI model processing unit 115 of the artificial intelligence system 110, and the control processing module 120 generates a first control instruction CS1, a second control instruction CS2, and a third control instruction CS3 according to the intelligent control instruction ACS and related data transmitted by the AI model processing unit 115, so as to perform processing operations on the substrate 200. It should be noted that the intelligent control instruction ACS includes a plurality of processing parameters calculated and optimized by the AI model processing unit 115, as well as the best construction path and construction rules, that is, the AI model processing unit 115 will command the control processing module 120 how to control all operations of the photography and imaging module 130, the laser desoldering module 140, and the alignment module 150. The photographic imaging module 130 is connected to the control processing module 120. The photographic imaging module 130 photographs or captures the substrate 200 according to the first control instruction CS1 transmitted by the control processing module 120. The control processing module 120 photographs the substrate 200 and takes out the substrate processing picture through the photographic imaging module 130. The number of photographic imaging modules 130 is not limited to one. The photographic imaging module 130 can photograph and take out the picture of one unit or processed area of the substrate 200, or the entire substrate 200, and this is performed according to a preset rule. Furthermore, the photographic imaging module 130 reads the quick response matrix of the board production material number on the substrate 200, and transmits it back to the AI model processing unit 115 to identify the characteristics of the substrate 200 and perform pre-processing preparation for parameter optimization settings.

雷射除焊模組140連接至該控制處理模組120,該雷射除焊模組140根據該控制處理模組120所傳送之該第一控制指令CS1與一電路佈局圖TA來對該基板200進行雷射除焊,並且透過該電路佈局圖TA將該基板200區分為多個待加工區域,再由該雷射光束依照一預設定規則對每一該些待加工區域之該清除部224進行剝除作業。上述之電路佈局圖TA係指透過電腦輔助設計(CAD,Computer-Aided Design)/電腦輔助製造系統(CAM,Computer-aided Manufacturing) 來產出,這是一個可供自動設計、初稿、與展示的圖形導向自動化系統。The laser desoldering module 140 is connected to the control processing module 120. The laser desoldering module 140 performs laser desoldering on the substrate 200 according to the first control instruction CS1 and a circuit layout diagram TA transmitted by the control processing module 120, and divides the substrate 200 into a plurality of areas to be processed through the circuit layout diagram TA, and then the laser beam performs a stripping operation on the cleaning portion 224 of each of the areas to be processed according to a preset rule. The above-mentioned circuit layout diagram TA refers to the output through the computer-aided design (CAD, Computer-Aided Design)/computer-aided manufacturing system (CAM, Computer-aided Manufacturing), which is a graphic-oriented automation system for automatic design, drafting, and display.

進一步來說,在正式對基板200進行雷射除焊加工前,操作人員會導入製程參數,如油墨種類、顏色、厚度、移動面積或其它參數值,來讓人工智慧系統110的AI模型處理單元115去計算出所需的雷射光斑大小及雷射發數,以達到最佳化的效果,因為AI模型處理單元115已被眾多的數據資料或實務運作的大數據給預訓練完成,所以可以根據不同的基板特性來給出最佳化的設定。接下來,該雷射除焊模組140透過一雷射光束L1且根據一施工圖形來對基板200上的該清除部221進行剝除作業,以使該防焊層220形成至少一鏤空部226,其中該電路佈局圖TA導入該防焊層220之資料,再將該防焊層220之資料做成正片影像、負片影像或圖形轉檔處理,以取得該施工圖形,在本發明中。在取得施工圖形後,該控制處理模組120根據該雷射除焊模組140之之雷射光點大小與能量來計算雷射光點的重疊面積大小後,轉譯出一雷射點陣圖,如第九圖所示。在第九圖中,以三種圖形的轉譯來示意,其雷射點陣圖之解析度可由設計者或操作者來進行設定。Furthermore, before the laser desoldering process is officially performed on the substrate 200, the operator will introduce process parameters, such as ink type, color, thickness, moving area or other parameter values, to allow the AI model processing unit 115 of the artificial intelligence system 110 to calculate the required laser spot size and number of laser shots to achieve the optimization effect. Because the AI model processing unit 115 has been pre-trained with a large amount of data or big data from practical operations, it can provide optimized settings based on different substrate characteristics. Next, the laser solder removal module 140 removes the removal portion 221 on the substrate 200 through a laser beam L1 and according to a construction pattern, so that the solder mask 220 forms at least one hollow portion 226, wherein the circuit layout diagram TA imports the data of the solder mask 220, and then the data of the solder mask 220 is made into a positive image, a negative image or a graphic conversion process to obtain the construction pattern. In the present invention, after obtaining the construction pattern, the control processing module 120 calculates the overlapping area size of the laser spot according to the laser spot size and energy of the laser solder removal module 140, and translates a laser dot array, as shown in Figure 9. In Figure 9, three types of graphic renderings are used to illustrate that the resolution of the laser bitmap can be set by the designer or operator.

須注意的是,雷射光束L1所發射出之雷射光為毫秒級以上的高頻雷射光束(毫秒、微秒、奈秒或皮秒),雷射光束L1的種類可視材質的特性採用二氧化碳(CO2) 雷射、雅鉻(Yag)雷射、綠光雷射與紫外光的至少其中之一,達到清除防焊又無殘留或碳化的效果。在本發明實施例中,例如雷射光束L1為皮秒雷射光束,皮秒雷射光束停留在基板200的時間非常短,亦即這不會去過度燒蝕或剝除掉防焊層220下的焊墊210。此外,在本發明中的人工智慧(AI)系統110會根據加工路徑、該施工圖形與材質所需能量大小,來預判或調整雷射光斑大小與形狀。再者,人工智慧(AI)系統110根據運算後的結果來透過該參數優化設定單元113,對該基板200之同一板面的不同區域調整不同的雷射光斑大小與不同的雷射發數,以達到氣化表面的目標。It should be noted that the laser light emitted by the laser beam L1 is a high-frequency laser beam (milliseconds, microseconds, nanoseconds or picoseconds) above the millisecond level. The type of laser beam L1 can be selected according to the characteristics of the material, and at least one of carbon dioxide (CO2) laser, Yag laser, green laser and ultraviolet light is used to achieve the effect of removing solder mask without residue or carbonization. In the embodiment of the present invention, for example, the laser beam L1 is a picosecond laser beam, and the time that the picosecond laser beam stays on the substrate 200 is very short, that is, it will not over-etch or remove the solder pad 210 under the solder mask 220. In addition, the artificial intelligence (AI) system 110 in the present invention will predict or adjust the laser spot size and shape according to the processing path, the construction pattern and the energy required by the material. Furthermore, the artificial intelligence (AI) system 110 adjusts different laser spot sizes and different laser firing numbers for different areas of the same surface of the substrate 200 through the parameter optimization setting unit 113 according to the calculated results, so as to achieve the goal of vaporizing the surface.

請同時參考第一圖至第五圖,第四圖係為本發明的具有多個定位點的基板的第一實施例示意圖。第五圖係為本發明的具有多個定位點的基板的第二實施例示意圖。在進行雷射加工前通常會對基板200進行平整化且對位作業,以下將進一步說明本發明如何進行對位,而基板平整化在此不贅述。在先前技術下,板件上的定位套上工作台之定位銷,只有定位功能,並沒有能力解決板件變形漲縮的問題,所以常會導致板件報廢,然而本發明能夠解決這樣的問題,將詳細說明如下。如第四圖所示,在一實施利中,基板200之周圍四個角落分別具有一對位點P1,在另一實施利中,基板200之周圍四個角落分別具有一對位點P1且該基板之中央區域具有至少兩個對位點P2,如第五圖所示。本發明之以人工智慧驅動的雷射移除基板防焊層的智能除焊裝置100更包括對位模組150。對位模組150連接至該控制處理模組120,該對位模組150根據該控制處理模組120所傳送之一第三控制指令CS3且透過一紅外光RL來對待加工之該基板200進行對位,以進一步調整該施工圖形之漲縮幅度。進一步來說,因為防焊層220會遮蔽住對位點P1或P2,所以利用紅外光RL穿透有機物的特性,需要先透過該紅外光RL來透視防焊層220才能精準採集到對位點P1或P2的圖像,其中可透過該人工智慧(AI)系統110來分析且排除不適合之對位點P1或P2圖像,之後再進行對位。待對位完成後,並且人工智慧(AI)系統110計算該基板200之變形方向與程度,也就是會依照實物來調整漲縮變形,接下來透過CAM(Computer Aided Manufacturing, 電腦輔助製造)去產生變形後輸出的施工圖形。Please refer to Figures 1 to 5 at the same time. Figure 4 is a schematic diagram of the first embodiment of the substrate with multiple positioning points of the present invention. Figure 5 is a schematic diagram of the second embodiment of the substrate with multiple positioning points of the present invention. Before laser processing, the substrate 200 is usually flattened and aligned. The following will further explain how the present invention performs alignment, and the flattening of the substrate will not be repeated here. Under the prior art, the positioning pins on the positioning sleeve of the plate on the workbench only have a positioning function and are unable to solve the problem of deformation and expansion of the plate, so it often leads to the scrapping of the plate. However, the present invention can solve such a problem, which will be described in detail below. As shown in the fourth figure, in one implementation, the four corners around the substrate 200 each have a pair of points P1, and in another implementation, the four corners around the substrate 200 each have a pair of points P1 and the central area of the substrate has at least two alignment points P2, as shown in the fifth figure. The intelligent solder removal device 100 of the present invention for removing the solder mask of the substrate by laser driven by artificial intelligence further includes an alignment module 150. The alignment module 150 is connected to the control processing module 120, and the alignment module 150 aligns the substrate 200 to be processed according to a third control instruction CS3 transmitted by the control processing module 120 and through an infrared light RL to further adjust the expansion and contraction amplitude of the construction pattern. Furthermore, because the solder mask 220 will cover the alignment point P1 or P2, the infrared light RL needs to be used to see through the solder mask 220 to accurately capture the image of the alignment point P1 or P2, and the artificial intelligence (AI) system 110 can be used to analyze and exclude the unsuitable alignment point P1 or P2 image, and then the alignment is performed. After the alignment is completed, the artificial intelligence (AI) system 110 calculates the deformation direction and degree of the substrate 200, that is, it will adjust the growth and contraction deformation according to the physical object, and then generate the deformed output construction drawing through CAM (Computer Aided Manufacturing).

接下來,請同時參考第一圖至第八圖,第八圖係為本發明的將電路佈局圖與基板加工圖片進行比對之示意圖。在該雷射除焊模組140透過一雷射光束L1且根據一施工圖形來對基板200上的該清除部221進行剝除作業後,控制處理模組120會控制該攝影取像模組130對該基板200進行攝影且取出一基板加工圖片DC,並且比對且判斷該基板加工圖片DC與該電路佈局圖TA是否相同。在第八圖之螢幕SC上,可以看到基板加工圖片DC與電路佈局圖TA正在進行比對,如果相同,則完成基板加工作業。如果不相同,則該雷射除焊模組140會針對不相同之處再發出雷射光束L1來對該清除部224進行剝除作業。據此,由於本發明之以人工智慧驅動的雷射移除基板防焊層的智能除焊裝置100完全沒有使用到光罩,所以不同焊墊210位置之電路基板200,皆不再須要先製作出符合電路基板之光罩。此外,以人工智慧驅動的雷射移除基板防焊層的智能除焊裝置100完全沒有使用到曝光裝置,所以不會被曝光裝置的曝光部內的溫度、濕度等環境條件所影響,因此不會讓電路基板及光罩上的定位標記之位置精度及曝光圖案之位置精度等產生變化。在上述之控制處理模組120、攝影取像模組130與對位模組140可視為一雷射設備。Next, please refer to the first to eighth figures at the same time. The eighth figure is a schematic diagram of comparing the circuit layout diagram with the substrate processing picture of the present invention. After the laser solder removal module 140 removes the cleaning portion 221 on the substrate 200 through a laser beam L1 and according to a construction pattern, the control processing module 120 controls the photography module 130 to photograph the substrate 200 and take out a substrate processing picture DC, and compare and determine whether the substrate processing picture DC is the same as the circuit layout diagram TA. On the screen SC of the eighth figure, it can be seen that the substrate processing picture DC is being compared with the circuit layout diagram TA. If they are the same, the substrate processing operation is completed. If they are not the same, the laser desoldering module 140 will emit a laser beam L1 to the different places to perform a stripping operation on the cleaning portion 224. Accordingly, since the intelligent desoldering device 100 for removing the substrate solder mask layer by laser driven by artificial intelligence of the present invention does not use a mask at all, the circuit substrate 200 with different solder pad 210 positions no longer needs to first produce a mask that conforms to the circuit substrate. In addition, the intelligent desoldering device 100 for removing the substrate solder mask layer by laser driven by artificial intelligence does not use an exposure device at all, so it will not be affected by the environmental conditions such as temperature and humidity in the exposure part of the exposure device, so the position accuracy of the positioning marks on the circuit substrate and the mask and the position accuracy of the exposure pattern will not change. The control processing module 120, the photographing and imaging module 130 and the alignment module 140 mentioned above can be regarded as a laser device.

最後,請參考第一圖與第十圖,第十圖係為本發明的多光源雷射對基板進行加工之示意圖。雷射加工機台MT上具有多個雷射除焊模組141、142與143,這些都是跟第一圖之雷射除焊模組140相同,雷射除焊模組141、142與143分別都連接控制處理模組120來進行多工作業。此外,多個雷射除焊模組141、142與143係分別根據電路佈局圖TA來分別發射出雷射光束L2、L3與L4且依序對基板200上的清除部224進行燒蝕或剝除作業,其中每一雷射除焊模組之雷射光源所負責之區域為不同,這有助於進一步提高加工製程之效率。本實施例中,以三個雷射除焊模組141、142與143作為舉例說明,但實際應用上,並不以數量三個作為限制。雷射光束L2、L3與L4可以是毫秒級以上的高頻雷射光束(毫秒、微秒、奈秒或皮秒)。Finally, please refer to the first figure and the tenth figure. The tenth figure is a schematic diagram of the multi-light source laser processing of the substrate of the present invention. The laser processing machine MT has multiple laser desoldering modules 141, 142 and 143, which are the same as the laser desoldering module 140 in the first figure. The laser desoldering modules 141, 142 and 143 are respectively connected to the control processing module 120 to perform multiple operations. In addition, the multiple laser desoldering modules 141, 142 and 143 respectively emit laser beams L2, L3 and L4 according to the circuit layout diagram TA and sequentially perform ablation or stripping operations on the cleaning portion 224 on the substrate 200, wherein the laser light source of each laser desoldering module is responsible for a different area, which helps to further improve the efficiency of the processing process. In this embodiment, three laser desoldering modules 141, 142 and 143 are used as examples for illustration, but in actual application, the number is not limited to three. The laser beams L2, L3 and L4 can be high-frequency laser beams (milliseconds, microseconds, nanoseconds or picoseconds) above the millisecond level.

綜上所述,本發明所揭露之基板之雷射移除防焊層製程方法能夠達到以下功效: 1. 大幅縮短加工製程之步驟; 2. 提昇製程良率; 3. 具有可控制能量之雷射光束; 4. 提高加工製程的圖案精度; 5. 不同焊墊位置之電路基板,皆不再須要先製作出符合電路基板之光罩; 6. 不會有溫度、濕度等環境條件之影響; 7. 不用顯影以大幅減少廢水污染,同時節省能源; 8. 不限油墨,油墨成本降低; 9. 採用二氧化碳(CO2) 雷射、雅鉻(Yag)雷射、綠光雷射與紫外光的至少其中之一,達到清除防焊又無殘留或碳化的效果; 10. 解決先前技術中關於半固化之防焊硬度不足或有黏性,容易在作業中造成報廢的問題;以及 11. 減少環境傷害,合乎ESG標準,有助於永續發展。 In summary, the laser solder mask removal process method disclosed in the present invention can achieve the following effects: 1. Greatly shorten the steps of the processing process; 2. Improve the process yield; 3. Have a laser beam with controllable energy; 4. Improve the pattern accuracy of the processing process; 5. Circuit substrates with different solder pad positions no longer need to first make a mask that meets the circuit substrate; 6. There will be no impact of environmental conditions such as temperature and humidity; 7. No need for development to greatly reduce wastewater pollution and save energy at the same time; 8. No limit on ink, ink cost is reduced; 9. Use carbon dioxide (CO2) At least one of laser, Yag laser, green laser and ultraviolet light can achieve the effect of removing solder mask without residue or carbonization; 10. Solve the problem of semi-cured solder mask in the previous technology that is not hard enough or sticky, which is easy to cause scrapping during operation; and 11. Reduce environmental damage, meet ESG standards, and contribute to sustainable development.

唯以上所述者,僅為本發明之較佳實施例而已,並非用來限定本發明實施之範圍。故即凡依本發明申請範圍所述之特徵及精神所為之均等變化或修飾,均應包括於本發明之申請專利範圍內。However, the above is only the preferred embodiment of the present invention and is not intended to limit the scope of the present invention. Therefore, all equivalent changes or modifications based on the features and spirit described in the scope of the present invention should be included in the scope of the patent application of the present invention.

100:以人工智慧驅動的雷射移除基板防焊層的智能除焊裝置 110:人工智慧(AI)系統 111:資料庫單元 112:學習且訓練單元 113:參數優化設定單元 114:條件限制單元 115:AI模型處理單元 120:控制處理模組 130:攝影取像模組 140、141、142、143:雷射除焊模組 150:對位模組 200:基板 210:焊墊 220:防焊層 222:遮蔽部 224:清除部 226:鏤空部 300:雲端平台 ACS:智能控制指令 CS1:第一控制指令 CS2:第一控制指令 CS3:第一控制指令 P1、P2:定位點 NT:網際網路 MT:雷射加工機台 SC:螢幕 L1、L2、L3、L4:雷射光束 TA:電路佈局圖 DC:基板加工圖片 RL:紅外光 100: Intelligent desoldering device for removing solder mask from substrate by laser driven by artificial intelligence 110: Artificial intelligence (AI) system 111: Database unit 112: Learning and training unit 113: Parameter optimization setting unit 114: Condition restriction unit 115: AI model processing unit 120: Control processing module 130: Photographic imaging module 140, 141, 142, 143: Laser desoldering module 150: Alignment module 200: Substrate 210: Solder pad 220: Solder mask 222: Shielding unit 224: Removal unit 226: Hollowing unit 300: Cloud platform ACS: Intelligent control instruction CS1: First control instruction CS2: First control command CS3: First control command P1, P2: Positioning point NT: Internet MT: Laser processing machine SC: Screen L1, L2, L3, L4: Laser beam TA: Circuit layout diagram DC: Substrate processing picture RL: Infrared light

第一圖係為以人工智慧驅動的雷射移除基板防焊層的智能除焊裝置之架構圖。 第二圖係為本發明的基板之側視圖。 第三圖係為本發明的基板覆蓋防焊層之側視圖。 第四圖係為本發明的具有多個定位點的基板的第一實施例示意圖。 第五圖係為本發明的具有多個定位點的基板的第二實施例示意圖。 第六圖係為本發明的智能除焊裝置對基板進行加工之立體示意圖。 第七圖係為本發明的攝影取像模組對基板進行取像之示意圖。 第八圖係為本發明的將電路佈局圖與基板加工圖片進行比對之示意圖。 第九圖係為本發明的轉譯出雷射點陣圖之示意圖。 第十圖係為本發明的多光源雷射對基板進行加工之示意圖。 The first figure is a schematic diagram of an intelligent solder removal device for removing a substrate solder mask layer by laser driven by artificial intelligence. The second figure is a side view of a substrate of the present invention. The third figure is a side view of a substrate covered with a solder mask layer of the present invention. The fourth figure is a schematic diagram of a first embodiment of a substrate with multiple positioning points of the present invention. The fifth figure is a schematic diagram of a second embodiment of a substrate with multiple positioning points of the present invention. The sixth figure is a three-dimensional schematic diagram of the intelligent solder removal device of the present invention processing a substrate. The seventh figure is a schematic diagram of the photographic imaging module of the present invention capturing an image of a substrate. The eighth figure is a schematic diagram of comparing a circuit layout diagram with a substrate processing image of the present invention. The ninth figure is a schematic diagram of the translated laser dot matrix of the present invention. Figure 10 is a schematic diagram of the multi-light source laser processing of the substrate of the present invention.

100:以人工智慧驅動的雷射移除基板防焊層的智能除焊裝置 100: Intelligent desoldering device that uses artificial intelligence-driven laser to remove the solder mask of substrates

110:人工智慧(AI)系統 110: Artificial Intelligence (AI) System

111:資料庫單元 111: Database unit

112:學習且訓練單元 112: Learning and training unit

113:參數優化設定單元 113: Parameter optimization setting unit

114:條件限制單元 114: Conditional unit

115:AI模型處理單元 115: AI model processing unit

120:控制處理模組 120: Control processing module

130:攝影取像模組 130: Photography and imaging module

140:雷射除焊模組 140: Laser desoldering module

150:對位模組 150: Alignment module

200:基板 200: Substrate

300:雲端平台 300: Cloud Platform

ACS:智能控制指令 ACS: Intelligent Control Instructions

CS1:第一控制指令 CS1: First control instruction

CS2:第一控制指令 CS2: First control instruction

CS3:第一控制指令 CS3: First control instruction

NT:網際網路 NT: Internet

Claims (13)

一種以人工智慧驅動的雷射移除基板防焊層的智能除焊裝置,係以透過可控制能量之雷射來對安置於一雷射加工機台之至少一基板進行加工作業,每一該基板對應於一板件生產料號,並且該基板表面設置有至少一焊墊並且於該基板與該焊墊表面覆蓋一防焊層,其中該防焊層正對該基板表面處為一遮蔽部,且該防焊層正對於該焊墊處為一清除部,該以人工智慧驅動的雷射移除基板防焊層的智能除焊裝置包括: 一人工智慧(AI)系統,用以對該些基板之種類、該些基板之尺寸、該些基板之厚度、該防焊層之顏色、該防焊層之厚度與該些焊墊周圍之深度進行學習與預訓練,且根據待加工之該基板之特性來自動對全部的多個加工參數進行優化設定,該人工智慧系統包括: 一資料庫單元,其具有該些基板之種類、該些基板之尺寸、該些基板之厚度、該防焊層之顏色、該防焊層之厚度與該些焊墊周圍之深度之相關數據資料,其中該資料庫單元透過網際網路連接至一雲端平台來線上更新相關數據資料; 一學習且訓練單元,其連接至該資料庫單元,該學習且訓練單元透過一基板深度學習演算法且根據該資料庫單元內的相關數據資料來進行學習與預訓練; 一參數優化設定單元,其連接至該資料庫單元,該參數優化設定單元用以根據該些該些基板之種類、該些基板之尺寸、該些基板之厚度、該防焊層之顏色、該防焊層之厚度與該些焊墊周圍之深度之相關數據資料來進行該些加工參數的優化設定; 一條件限制單元,其連接至該學習且訓練單元,該條件限制單元用以透過設定多個條件來限制該人工智慧(AI)系統之學習偏差;以及 一AI模型處理單元,其連接至該學習且訓練單元與該參數優化設定單元,該AI模型處理單元透過該學習且訓練單元來對一AI模型進行學習與訓練,其中該AI模型處理單元為該人工智慧系統之AI大腦; 一控制處理模組,其連接至該人工智慧系統之該AI模型處理單元,該控制處理模組根據AI模型處理單元所傳送之指令及相關數據來產生一第一控制指令、一第二控制指令與一第三控制指令,以對該基板進行加工作業; 一攝影取像模組,其連接至該控制處理模組,該攝影取像模組根據該控制處理模組所傳送之該第一控制指令來對該基板進行攝影或取像,其中該攝影取像模組讀取該基板上之該板件生產料號之快速響應矩陣圖,並且回傳至該AI模型處理單元以辨別該基板特性,且進行參數優化設定之加工前準備;以及 一雷射除焊模組,其連接至該控制處理模組,該雷射除焊模組根據該控制處理模組所傳送之該第一控制指令與一電路佈局圖來對該基板進行雷射除焊,其中該雷射除焊模組透過一雷射光束且根據一施工圖形來對該清除部進行剝除作業,以使該防焊層形成至少一鏤空部,其中該電路佈局圖導入該防焊層之資料,再將該防焊層之資料做成正片影像、負片影像或圖形轉檔處理,以取得該施工圖形。 An intelligent solder removal device for removing a substrate solder mask layer by laser driven by artificial intelligence uses a laser with controllable energy to process at least one substrate placed on a laser processing machine. Each substrate corresponds to a board production material number, and at least one solder pad is provided on the surface of the substrate, and a solder mask is covered on the surface of the substrate and the solder pad, wherein the solder mask is a shielding portion facing the substrate surface, and the solder mask is a cleaning portion facing the solder pad. The intelligent solder removal device for removing a substrate solder mask layer by laser driven by artificial intelligence includes: An artificial intelligence (AI) system is used to learn and pre-train the types of the substrates, the sizes of the substrates, the thickness of the substrates, the color of the solder mask, the thickness of the solder mask, and the depth around the pads, and automatically optimize all multiple processing parameters according to the characteristics of the substrate to be processed. The artificial intelligence system includes: A database unit, which has relevant data on the types of the substrates, the sizes of the substrates, the thickness of the substrates, the color of the solder mask, the thickness of the solder mask, and the depth around the pads, wherein the database unit is connected to a cloud platform via the Internet to update the relevant data online; A learning and training unit connected to the database unit, the learning and training unit performs learning and pre-training through a substrate deep learning algorithm and according to the relevant data in the database unit; A parameter optimization setting unit connected to the database unit, the parameter optimization setting unit is used to optimize the processing parameters according to the relevant data of the types of the substrates, the sizes of the substrates, the thickness of the substrates, the color of the solder mask, the thickness of the solder mask and the depth around the solder pads; A condition restriction unit connected to the learning and training unit, the condition restriction unit is used to limit the learning deviation of the artificial intelligence (AI) system by setting multiple conditions; and An AI model processing unit connected to the learning and training unit and the parameter optimization setting unit, the AI model processing unit learns and trains an AI model through the learning and training unit, wherein the AI model processing unit is the AI brain of the artificial intelligence system; A control processing module connected to the AI model processing unit of the artificial intelligence system, the control processing module generates a first control instruction, a second control instruction and a third control instruction according to the instructions and related data transmitted by the AI model processing unit to perform processing operations on the substrate; A photographic imaging module connected to the control processing module, the photographic imaging module photographs or captures the substrate according to the first control instruction transmitted by the control processing module, wherein the photographic imaging module reads the rapid response matrix of the board production material number on the substrate, and transmits it back to the AI model processing unit to identify the characteristics of the substrate, and performs pre-processing preparation for parameter optimization settings; and A laser desoldering module is connected to the control processing module. The laser desoldering module performs laser desoldering on the substrate according to the first control instruction and a circuit layout diagram transmitted by the control processing module. The laser desoldering module removes the clearing portion through a laser beam and according to a construction drawing, so that the solder mask layer forms at least one hollow portion. The circuit layout drawing imports the data of the solder mask layer, and then converts the data of the solder mask layer into a positive image, a negative image or a graphic conversion process to obtain the construction drawing. 如請求項1所述之以人工智慧驅動的雷射移除基板防焊層的智能除焊裝置,其中該人工智慧(AI)系統根據加工路徑、該施工圖形與材質所需能量大小,來預判或調整雷射光斑大小與形狀。An intelligent solder removal device for removing the solder mask of a substrate by laser driven by artificial intelligence as described in claim 1, wherein the artificial intelligence (AI) system predicts or adjusts the size and shape of the laser spot according to the processing path, the construction pattern and the energy required for the material. 如請求項1所述之以人工智慧驅動的雷射移除基板防焊層的智能除焊裝置,其中該人工智慧(AI)系統根據運算後的結果來透過該參數優化設定單元,對該基板之同一板面的不同區域調整不同的雷射光斑大小與不同的雷射發數。An intelligent solder removal device for removing the solder mask of a substrate by laser driven by artificial intelligence as described in claim 1, wherein the artificial intelligence (AI) system adjusts different laser spot sizes and different laser firing numbers for different areas of the same surface of the substrate through the parameter optimization setting unit according to the calculated results. 如請求項1所述之以人工智慧驅動的雷射移除基板防焊層的智能除焊裝置,更包括: 一對位模組,其連接至該控制處理模組,該對位模組根據該控制處理模組所傳送之一第三控制指令且透過一紅外光來對待加工之該基板進行對位,以進一步調整該施工圖形之漲縮幅度,其中該紅外光用以透視防焊層,其中透過該人工智慧(AI)系統分析且排除不適合之對位點圖像,並且計算該基板之變形方向與程度。 The intelligent solder removal device for removing the solder mask layer of the substrate by laser driven by artificial intelligence as described in claim 1 further includes: A positioning module connected to the control processing module, the positioning module aligns the substrate to be processed according to a third control instruction transmitted by the control processing module and through an infrared light to further adjust the increase and decrease amplitude of the construction pattern, wherein the infrared light is used to see through the solder mask, wherein the artificial intelligence (AI) system analyzes and excludes inappropriate positioning point images, and calculates the deformation direction and degree of the substrate. 如請求項4所述之以人工智慧驅動的雷射移除基板防焊層的智能除焊裝置,其中該基板之周圍四個角落分別具有一對位點。An intelligent desoldering device for removing the solder mask of a substrate by laser driven by artificial intelligence as described in claim 4, wherein each of the four corners around the substrate has a pair of points. 如請求項4所述之以人工智慧驅動的雷射移除基板防焊層的智能除焊裝置,其中該基板之周圍四個角落分別具有一對位點且該基板之中央區域具有至少兩個對位點。An intelligent desoldering device for removing the solder mask layer of a substrate by laser driven by artificial intelligence as described in claim 4, wherein each of the four corners around the substrate has a pair of positioning points and the central area of the substrate has at least two positioning points. 如請求項1所述之以人工智慧驅動的雷射移除基板防焊層的智能除焊裝置,其中在取得該施工圖形後,該控制處理模組根據該雷射除焊模組之雷射光點大小與能量來計算雷射光點的重疊面積大小後,轉譯出一雷射點陣圖。As described in claim 1, the intelligent desoldering device for removing the solder mask of the substrate by laser driven by artificial intelligence, wherein after obtaining the construction drawing, the control processing module calculates the overlapping area size of the laser spot according to the laser spot size and energy of the laser desoldering module, and then translates it into a laser dot matrix. 如請求項1所述之以人工智慧驅動的雷射移除基板防焊層的智能除焊裝置,其中透過該攝影取像模組對該基板進行攝影且取出一基板加工圖片,並且比對且判斷該基板加工圖片與該電路佈局圖是否相同,如果相同,則完成基板加工作業。As described in claim 1, an intelligent solder removal device that uses an artificial intelligence-driven laser to remove the solder mask of a substrate, wherein the substrate is photographed by the photographic imaging module and a substrate processing image is taken out, and the substrate processing image is compared and judged to see whether it is the same as the circuit layout diagram. If they are the same, the substrate processing operation is completed. 如請求項3所述之以人工智慧驅動的雷射移除基板防焊層的智能除焊裝置,在比對且判斷該基板加工圖片與該電路佈局圖是否相同之步驟中,如果不相同,則該雷射光束針對不相同之處再對該清除部進行剝除作業。As described in claim 3, in the step of comparing and determining whether the substrate processing image is identical to the circuit layout image, the intelligent solder removal device for removing the solder mask of the substrate by laser driven by artificial intelligence, if they are not identical, the laser beam will then perform a stripping operation on the cleaning portion at the different locations. 如請求項1所述之以人工智慧驅動的雷射移除基板防焊層的智能除焊裝置,其中透過該電路佈局圖將該基板區分為多個待加工區域,再由該雷射光束依照一預設定規則對每一該些待加工區域之該清除部進行剝除作業。As described in claim 1, an intelligent solder removal device that uses artificial intelligence-driven laser to remove the solder mask of a substrate, wherein the substrate is divided into multiple areas to be processed through the circuit layout diagram, and the laser beam then performs a stripping operation on the clearing portion of each of the areas to be processed according to a preset rule. 如請求項1所述之以人工智慧驅動的雷射移除基板防焊層的智能除焊裝置,其中該雷射光束所發射出之雷射光為毫秒級以上的高頻雷射光束。As described in claim 1, an intelligent solder removal device for removing the solder mask layer of a substrate by using an artificial intelligence-driven laser, wherein the laser light emitted by the laser beam is a high-frequency laser beam above the millisecond level. 如請求項1所述之以人工智慧驅動的雷射移除基板防焊層的智能除焊裝置,其中該雷射光束之種類依據材質的特性採用二氧化碳(CO2) 雷射、雅鉻(Yag)雷射、綠光雷射與紫外光的至少其中之一,以達到清除防焊又無殘留或碳化的效果。An intelligent solder removal device for removing the solder mask layer of a substrate by using an artificial intelligence-driven laser as described in claim 1, wherein the type of the laser beam is at least one of a carbon dioxide (CO2) laser, a Yag laser, a green laser and an ultraviolet light according to the characteristics of the material, so as to achieve the effect of removing the solder mask without residue or carbonization. 如請求項1所述之以人工智慧驅動的雷射移除基板防焊層的智能除焊裝置,其中該雷射除焊模組具有多組雷射光源來各自發出該雷射光束,其分別根據該第一控制指令與該電路佈局圖來對該基板之該清除部進行剝除作業,其中每一雷射光源所負責之區域為不同。As described in claim 1, an intelligent desoldering device for removing the solder mask of a substrate by laser driven by artificial intelligence, wherein the laser desoldering module has multiple sets of laser light sources to emit the laser beam respectively, which respectively perform the stripping operation on the cleaning portion of the substrate according to the first control instruction and the circuit layout diagram, wherein each laser light source is responsible for a different area.
TW112136044A 2022-11-28 2023-09-21 Artificial intelligence (ai) desoldering device for laser removal of substrate resist layers TW202421323A (en)

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