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純電動(dòng)汽車(chē)磷酸鐵鋰電池組的建模及優(yōu)化
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(廣西大學(xué) 電氣工程學(xué)院,南寧 530004)

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宋紹劍(1970),男,廣西象州人,教授,碩士生導師,主要從事新能源轉換與控制、復雜系統建模與優(yōu)化方向的研究。[FQ)]

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國家自然科學(xué)基金項目(61364007);國家自然科學(xué)基金重點(diǎn)項目(610034002) 。 


Modeling and Optimization of Pure Electric Vehicle's LiFePO4 Battery Pack
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(School of Electrical Engineering,Guangxi University,Nanning 530004, China)

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    摘要:

    鑒于傳統神經(jīng)網(wǎng)絡(luò )和支持向量機機理復雜、計算量大的缺陷,很難實(shí)時(shí)跟蹤磷酸鐵鋰電池組復雜快速的內部反應,影響電池荷電狀態(tài)的估算精度,提出應用一種簡(jiǎn)單、有效的極限學(xué)習機對一額定容量為100 Ah、額定電壓為72 V的純電動(dòng)汽車(chē)磷酸鐵鋰電池組建模,并分別與BP神經(jīng)網(wǎng)絡(luò )、RBF神經(jīng)網(wǎng)絡(luò )、支持向量機進(jìn)行對比;隨后,以學(xué)習時(shí)間和泛化性能為優(yōu)化目標,應用粒子群方法尋找最佳隱層節點(diǎn)個(gè)數;結果表明,基于極限學(xué)習機的磷酸鐵鋰電池組模型的學(xué)習時(shí)間、泛化性能優(yōu)于BP神經(jīng)網(wǎng)絡(luò )、RBF神經(jīng)網(wǎng)絡(luò )、支持向量機;隱層節點(diǎn)優(yōu)化后,模型的學(xué)習時(shí)間和泛化性能達到最優(yōu)。

    Abstract:

    The traditional neural networks and support vector machine have the weakness of complex mechanism and large amount of computation. It is difficult to track the complex and fast inner reaction of LiFePO4 battery pack in real time, affecting the estimation accuracy of the battery state of charge. A simple and effective extreme learning machine is proposed for the modeling of pure electric vehicle’s LiFePO4 battery pack,whose rated capacity is 100 Ah and nominal voltage is 72 V, then compared with the back-propagation neural networks-based, radical basis function neural networks-based and support vector machines-based. Subsequently, taking the learning time and generalization performance as the optimization goal and using the particle swarm to find the optimal hidden node. The results show that the model of LiFePO4 battery pack based on extreme learning machine has shorter learning time and higher generalization performance compared with the model based on BP neural networks, RBF neural networks and support vector machines. After optimization of hidden nodes, learning time and generalization performance of the model is optimal.

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宋紹劍,林慶芳,林小峰.純電動(dòng)汽車(chē)磷酸鐵鋰電池組的建模及優(yōu)化計算機測量與控制[J].,2015,23(5):1713-1716.

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  • 在線(xiàn)發(fā)布日期: 2015-07-31
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