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Data-driven short circuit resistance estimation in battery safety issues 被引量:1
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作者 Yikai Jia Jun Xu 《Journal of Energy Chemistry》 SCIE EI CAS CSCD 2023年第4期37-44,共8页
Developing precise and fast methods for short circuit detection is crucial for preventing or mitigating the risk of safety issues of lithium-ion batteries(LIBs).In this paper,we developed a Convolutional Neural Networ... Developing precise and fast methods for short circuit detection is crucial for preventing or mitigating the risk of safety issues of lithium-ion batteries(LIBs).In this paper,we developed a Convolutional Neural Networks(CNN)based model that can quickly and precisely predict the short circuit resistance of LIB cells during various working conditions.Cycling tests of cells with an external short circuit(ESC)are produced to obtain the database and generate the training/testing samples.The samples are sequences of voltage,current,charging capacity,charging energy,total charging capacity,total charging energy with a length of 120 s and frequency of 1 Hz,and their corresponding short circuit resistances.A big database with~6×10^(5)samples are generated,covering various short circuit resistances(47~470Ω),current loading modes(Constant current-constant voltage(CC-CV)and drive cycle),and electrochemical states(cycle numbers from 1 to 300).Results show that the average relative absolute error of five random sample splits is 6.75%±2.8%.Further parametric analysis indicates the accuracy estimation benefits from the appropriate model setups:the optimized input sequence length(~120 s),feature selection(at least one total capacity-related variable),and rational model design,using multiple layers with different kernel sizes.This work highlights the capabilities of machine learning algorithms and data-driven methodologies in real-time safety risk prediction for batteries. 展开更多
关键词 Lithium-ion battery Safety risk Internal short circuit Short circuit resistance Convolutional neural networks
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Application of resist-profile-aware source optimization in 28 nm full chip optical proximity correction 被引量:1
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作者 Jun Zhu David Wei Zhang +6 位作者 Chinte Kuo Qing Wang Fang Wei Chenming Zhang Han Chen Daquan He Stephen D.Hsu 《Journal of Semiconductors》 EI CAS CSCD 2017年第7期83-88,共6页
As technology node shrinks, aggressive design rules for contact and other back end of line(BEOL)layers continue to drive the need for more effective full chip patterning optimization. Resist top loss is one of the m... As technology node shrinks, aggressive design rules for contact and other back end of line(BEOL)layers continue to drive the need for more effective full chip patterning optimization. Resist top loss is one of the major challenges for 28 nm and below technology nodes, which can lead to post-etch hotspots that are difficult to predict and eventually degrade the process window significantly. To tackle this problem, we used an advanced programmable illuminator(FlexRay) and Tachyon SMO(Source Mask Optimization) platform to make resistaware source optimization possible, and it is proved to greatly improve the imaging contrast, enhance focus and exposure latitude, and minimize resist top loss thus improving the yield. 展开更多
关键词 integrated circuits OPC source optimization lithography resist top loss
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