搜索

x

留言板

尊敬的读者、作者、审稿人, 关于本刊的投稿、审稿、编辑和出版的任何问题, 您可以本页添加留言。我们将尽快给您答复。谢谢您的支持!

姓名
邮箱
手机号码
标题
留言内容
验证码

基于粒子群优化支持向量机的太阳电池温度预测

赵志刚 张纯杰 苟向锋 桑虎堂

引用本文:
Citation:

基于粒子群优化支持向量机的太阳电池温度预测

赵志刚, 张纯杰, 苟向锋, 桑虎堂

Solar cell temperature prediction model of support vector machine optimized by particle swarm optimization algorithm

Zhao Zhi-Gang, Zhang Chun-Jie, Gou Xiang-Feng, Sang Hu-Tang
PDF
导出引用
  • 建立通用而精确的太阳电池热模型对光伏系统的建模、输出功率与转换效率的损失分析至关重要. 基于复杂的太阳电池温度机理, 分别研究了太阳电池温度的稳态热模型(steady state thermal model, SSTM)和支持向量机(support vector machines, SVM) 方法建立的精确预测热模型. 首先, 基于空气温度、太阳辐射强度、风速3个最主要因素与太阳电池温度的近似线性关系, 在已有SSTM的基础上, 建立并校正了太阳电池的SSTM并采用差分进化算法提取模型的未知参数. 其次, 为提高SVM的模型预测精度, 采用粒子群优化(particle swarm optimization, PSO) 算法对SVM的核参数和惩罚因子进行动态寻优, 在确定输入/输出样本集并划分训练集和测试集的基础上, 建立了基于粒子群优化支持向量机(PSO-SVM)的太阳电池温度精确预测热模型. 最后, 搭建实验平台, 在实验操作过程中减弱空气湿度、太阳入射角和热迟滞效应等因素对太阳电池温度的耦合. 通过实验对比表明, 建立的预测热模型性能可靠、全面、简洁, 其参数寻优算法优于遗传算法和交叉校验法, 模型预测精度优于反向传播神经网络(back propagation neural network) 和SSTM.
    Establishing a general and precise solar cell temperature model is of crucial importance for photovoltaic system modeling, the loss analysis of output power, and conversion efficiency. According to the complex mechanism of solar cell temperature, in this paper we study the steady state thermal model (SSTM) of solar cell temperature and accurate prediction model of method of support vector machine (SVM). Firstly, based on the approximate linear relationship among air temperature, solar radiation intensity, wind speed and solar cell temperature, the polynomial model of solar cell temperature is established and the unknown parameters of the model are extracted with the improved differential evolution algorithm. Secondly, in order to improve the accuracy of SVM prediction model, the particle swarm optimization algorithm is adopted to optimize the parameters (including kernel parameter g and penalty factor C from the radial basis function kernel) of SVM. After the input/output sample set is determined and the training set and test set are classified, a prediction model of solar cell temperature based on particle swarm optimization support vector machine is established. Finally, experimental acquisition platform is built to reduce the influences of air humidity, solar incidence angle, and thermal hysteresis effects on PV cell temperature. Through contrasting experiments, it is shown that the established fitting of the SSTM is better than the models given in other literature, and the prediction model is reliable, comprehensive and simple. The selected parameter optimization algorithm is superior to genetic algorithm and cross-validation method established on the optimization performance, and the accuracy of prediction model is superior to the prediction performance of back propagation neural network and identified SSTM.
    [1]

    Farivar G, Asaei B, Haghdadi N, Iman-Eini H 2011 2nd Power Electronics, Drive Systems and Technologies Conference Tehran, The Islamic Republic of Iran, February 16-17, 2011 p336

    [2]

    Ju X, Vossier A, Wang Z F, Dollet A, Flamant G 2013 Sol. Energy 93 80

    [3]

    Torres-lobera D, Valkealahti S 2014 Sol. Energy 105 632

    [4]

    Trinuruk P, Sorapipatana C, Chenvidhya D 2009 Renew. Energy 34 2515

    [5]

    Liang Q B, Shu B F, Sun L J, Zhang Q Z, Chen M B 2014 Acta Phys. Sin. 63 168801 (in Chinese) [梁齐兵, 舒碧芬, 孙丽娟, 张奇淄, 陈明彪 2014 63 168801]

    [6]

    Hoang P, Bourdin V, Liu Q, Caruso G, Archambault V 2014 Sol. Energy Mater. Sol. Cells 125 325

    [7]

    Górecki K, Górecki P, Paduch K 2014 J. Phys. Conf. Ser. 494 1

    [8]

    Anantha Krishna H, Misra N K, Suresh M S 2011 IEEE Trans. Aerosp. Electron. Syst. 47 782

    [9]

    Torres-Lobera D, Valkealahti S 2013 Sol. Energy 93 183

    [10]

    Ilhan C, Erkaymaz O, Gedik E, Grel A E 2014 Case Studies Therm. Eng. 3 11

    [11]

    Sun Z H, Jiang F 2010 Chin. Phys. B 19 110502

    [12]

    Tang Z J, Ren F, Peng T, Wang W B 2014 Acta Phys. Sin. 63 050505 (in Chinese) [唐舟进, 任峰, 彭涛, 王文博 2014 63 050505]

    [13]

    Tian Z D, Gao X W, Shi T 2014 Acta Phys. Sin. 63 160508 (in Chinese) [田中大, 高宪文, 石彤 2014 63 160508]

    [14]

    Chen A L, Feng L N, Du C S, Zhang C H 2011 Trans. CES 26 140 (in Chinese) [陈阿莲, 冯丽娜, 杜春水, 张承慧 2011 电工技术学报 26 140]

    [15]

    Chen W G, Teng L, Liu J, Peng S Y, Sun C X 2014 Trans. CES 26 44 (in Chinese) [陈伟根, 滕黎, 刘军, 彭尚怡, 孙才新 2014 电工技术学报 26 44]

    [16]

    Matsukawa H, Koshiishi K, Koizumi H, Kurokawa K, Hamada M, Bo L 2003 Sol. Energy Mater. Sol. Cells 75 537

    [17]

    Wang W J, Men C Q 2014 Support Vector Machine Modeling and Its Application (Beijing: Science Press) p211 (in Chinese) [王文剑, 门昌骞 2014 支持向量机建模及应用(北京: 科学出版社) 第211页]

  • [1]

    Farivar G, Asaei B, Haghdadi N, Iman-Eini H 2011 2nd Power Electronics, Drive Systems and Technologies Conference Tehran, The Islamic Republic of Iran, February 16-17, 2011 p336

    [2]

    Ju X, Vossier A, Wang Z F, Dollet A, Flamant G 2013 Sol. Energy 93 80

    [3]

    Torres-lobera D, Valkealahti S 2014 Sol. Energy 105 632

    [4]

    Trinuruk P, Sorapipatana C, Chenvidhya D 2009 Renew. Energy 34 2515

    [5]

    Liang Q B, Shu B F, Sun L J, Zhang Q Z, Chen M B 2014 Acta Phys. Sin. 63 168801 (in Chinese) [梁齐兵, 舒碧芬, 孙丽娟, 张奇淄, 陈明彪 2014 63 168801]

    [6]

    Hoang P, Bourdin V, Liu Q, Caruso G, Archambault V 2014 Sol. Energy Mater. Sol. Cells 125 325

    [7]

    Górecki K, Górecki P, Paduch K 2014 J. Phys. Conf. Ser. 494 1

    [8]

    Anantha Krishna H, Misra N K, Suresh M S 2011 IEEE Trans. Aerosp. Electron. Syst. 47 782

    [9]

    Torres-Lobera D, Valkealahti S 2013 Sol. Energy 93 183

    [10]

    Ilhan C, Erkaymaz O, Gedik E, Grel A E 2014 Case Studies Therm. Eng. 3 11

    [11]

    Sun Z H, Jiang F 2010 Chin. Phys. B 19 110502

    [12]

    Tang Z J, Ren F, Peng T, Wang W B 2014 Acta Phys. Sin. 63 050505 (in Chinese) [唐舟进, 任峰, 彭涛, 王文博 2014 63 050505]

    [13]

    Tian Z D, Gao X W, Shi T 2014 Acta Phys. Sin. 63 160508 (in Chinese) [田中大, 高宪文, 石彤 2014 63 160508]

    [14]

    Chen A L, Feng L N, Du C S, Zhang C H 2011 Trans. CES 26 140 (in Chinese) [陈阿莲, 冯丽娜, 杜春水, 张承慧 2011 电工技术学报 26 140]

    [15]

    Chen W G, Teng L, Liu J, Peng S Y, Sun C X 2014 Trans. CES 26 44 (in Chinese) [陈伟根, 滕黎, 刘军, 彭尚怡, 孙才新 2014 电工技术学报 26 44]

    [16]

    Matsukawa H, Koshiishi K, Koizumi H, Kurokawa K, Hamada M, Bo L 2003 Sol. Energy Mater. Sol. Cells 75 537

    [17]

    Wang W J, Men C Q 2014 Support Vector Machine Modeling and Its Application (Beijing: Science Press) p211 (in Chinese) [王文剑, 门昌骞 2014 支持向量机建模及应用(北京: 科学出版社) 第211页]

  • [1] 张毅军, 慕晓冬, 郭乐勐, 张朋, 赵导, 白文华. 一种基于量子线路的支持向量机训练方案.  , 2023, 72(7): 070302. doi: 10.7498/aps.72.20222003
    [2] 梁可达, 刘滕飞, 常哲, 张猛, 李志鑫, 黄松松, 王晶. 基于最小二乘法和支持向量机的海洋内孤立波传播速度反演模型.  , 2023, 72(2): 028301. doi: 10.7498/aps.72.20221633
    [3] 宋堃, 高太长, 刘西川, 印敏, 薛杨. 基于支持向量机的微波链路雨强反演方法.  , 2015, 64(24): 244301. doi: 10.7498/aps.64.244301
    [4] 孟庆芳, 陈珊珊, 陈月辉, 冯志全. 基于递归量化分析与支持向量机的癫痫脑电自动检测方法.  , 2014, 63(5): 050506. doi: 10.7498/aps.63.050506
    [5] 王辉辉, 蒙林, 刘大刚, 刘腊群, 杨超. 基于相对论返波管的全三维PIC/PSO数值优化研究.  , 2013, 62(13): 138401. doi: 10.7498/aps.62.138401
    [6] 赵永平, 张丽艳, 李德才, 王立峰, 蒋洪章. 过滤窗最小二乘支持向量机的混沌时间序列预测.  , 2013, 62(12): 120511. doi: 10.7498/aps.62.120511
    [7] 于洋, 郝中骐, 李常茂, 郭连波, 李阔湖, 曾庆栋, 李祥友, 任昭, 曾晓雁. 支持向量机算法在激光诱导击穿光谱技术塑料识别中的应用研究.  , 2013, 62(21): 215201. doi: 10.7498/aps.62.215201
    [8] 行鸿彦, 祁峥东, 徐伟. 基于选择性支持向量机集成的海杂波背景中的微弱信号检测.  , 2012, 61(24): 240504. doi: 10.7498/aps.61.240504
    [9] 王芳芳, 张业荣. 基于支持向量机的电磁逆散射方法.  , 2012, 61(8): 084101. doi: 10.7498/aps.61.084101
    [10] 阎晓妹, 刘丁. 基于最小二乘支持向量机的分数阶混沌系统控制.  , 2010, 59(5): 3043-3048. doi: 10.7498/aps.59.3043
    [11] 王革丽, 杨培才, 毛宇清. 基于支持向量机方法对非平稳时间序列的预测.  , 2008, 57(2): 714-719. doi: 10.7498/aps.57.714
    [12] 蔡俊伟, 胡寿松, 陶洪峰. 基于选择性支持向量机集成的混沌时间序列预测.  , 2007, 56(12): 6820-6827. doi: 10.7498/aps.56.6820
    [13] 张家树, 党建亮, 李恒超. 时空混沌序列的局域支持向量机预测.  , 2007, 56(1): 67-77. doi: 10.7498/aps.56.67
    [14] 王东风, 韩 璞. 基于粒子群优化的混沌系统比例-积分-微分控制.  , 2006, 55(4): 1644-1650. doi: 10.7498/aps.55.1644
    [15] 高 飞, 童恒庆. 基于改进粒子群优化算法的混沌系统参数估计方法.  , 2006, 55(2): 577-582. doi: 10.7498/aps.55.577
    [16] 叶美盈. 基于最小二乘支持向量机建模的混沌系统控制.  , 2005, 54(1): 30-34. doi: 10.7498/aps.54.30
    [17] 叶美盈, 汪晓东, 张浩然. 基于在线最小二乘支持向量机回归的混沌时间序列预测.  , 2005, 54(6): 2568-2573. doi: 10.7498/aps.54.2568
    [18] 刘 涵, 刘 丁, 任海鹏. 基于最小二乘支持向量机的混沌控制.  , 2005, 54(9): 4019-4025. doi: 10.7498/aps.54.4019
    [19] 崔万照, 朱长纯, 保文星, 刘君华. 基于模糊模型支持向量机的混沌时间序列预测.  , 2005, 54(7): 3009-3018. doi: 10.7498/aps.54.3009
    [20] 崔万照, 朱长纯, 保文星, 刘君华. 混沌时间序列的支持向量机预测.  , 2004, 53(10): 3303-3310. doi: 10.7498/aps.53.3303
计量
  • 文章访问数:  6793
  • PDF下载量:  481
  • 被引次数: 0
出版历程
  • 收稿日期:  2014-10-31
  • 修回日期:  2014-11-25
  • 刊出日期:  2015-04-05

/

返回文章
返回
Baidu
map