Pragallapati Anirudh, Thandava Krishna Sai Pandraju, Shaik Ruksana Begam, C. Suresh, Manish Kumar, Muralidhar Nayak Bhukya
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引用次数: 0
摘要
本文提出了一种新的人工智能技术来优化光伏电池的基本建模参数。虽然文献中有很多参数提取技术,但由于光伏电池中采用了先进的材料,响应时间较短,主要是提取值与实际值相差较大,因此建模效率仍有提高的余地。因此,所提出的卷积神经网络(CNN)技术通过接受非线性合成数据来解决和克服上述问题。本文提出的CNN技术架构有6层,技术上分为Convolution层、Rectified Linear Unit (ReLU)层、Padding层、Pooling层、flating层、fully connected层和Output层。采用85W、125W和200W太阳能组件,将CNN技术在响应时间和接近实际值方面的有效性与闪电搜索算法(LSA)、模拟退火算法(SA)、差分进化算法(DE)、人工蜂群算法(ABC)和先进粒子群算法(APSO)进行了比较。
This paper presents a novel technique from the family of artificial intelligence to optimize the essential modeling parameters of Photovoltaic (PV) cell. Though many parameter extraction techniques are available in the literature, still there is a scope to improve the modeling efficiency due to the incorporation of advanced materials in PV cell, low response time, and mainly the wide difference between the extracted values and actual values. Therefore, the proposed Convolutional Neural Network (CNN) technique addresses and overcomes the above issues by accepting the nonlinear synthetic data. The proposed CNN technique architecture has six layers, technically these layers are classified as Convolution layer, Rectified Linear Unit (ReLU) layer, Padding layer, Pooling layer, Flattening layer, fully connected layer, and Output layer. The effectiveness of the proposed CNN technique in terms of response time, and closeness to the actual value is compared with Lightning Search Algorithm (LSA), Simulated Annealing (SA), Differential Evolution (DE), Artificial Bee Colony (ABC), and Advanced Particle Swarm Optimization (APSO) using 85W, 125W and 200W solar module.