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Performance prediction of photovoltaic arrays

机译:光伏阵列的性能预测

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The most important investment decision when it comes to implementing photovoltaic (PV) array(s) either for commercial or private application, is the levelized cost of energy (LCOE) calculation. Whereas LCOE, used as an assessment tool, to calculate the cost effectiveness of energy generation in relation to the return over investment in a prescribed time, can be calculated with a simple mathematical equation; it remains unattainable without a proper systems dynamic modelling and performance prediction of PV modules in the array(s). PV cells are unpredictable and have very low conversion efficiency of about 15-25% which makes it often necessary that maximum power point tracking (MPPT) system is integrated to PV modules to get optimum energy yield. This draw back, makes it quite crucial that output power and performance prediction of PV arrays at module level are established as a precursor to PV solar system design and implementation. This is key to sustaining efficient energy production by the PV generators, as it helps to detect if the DC power output of the PV modules is at optimum. In reality; it is quite challenging to accurately predict the performance of PV array power output due to variable factors like solar insolation, sun incident angle, temperature, PV array configuration, dust and non-uniform illumination amongst many factors. All these factors create nonlinear output characteristics in PV modules which results into instability in energy yield, faults, losses and costly maintenance of the PV infrastructure. This research study presents a method for the performance prediction of PV modules in an array. It involves using neural network model with three layers (input, hidden and output) to predict PV module energy yield under uniform and non-uniform illumination (shaded conditions). Typical data like open circuit voltage (Voc), short circuit current (Isc), solar insolation and cell temperature are taken into consideration. Training datasets are obtained from the PV under investigation and applied to the neural network using backpropagation algorithm to train the datasets. The PV module(array) maximum output power performance evaluation is verified by comparing the predicted neural network output power with the empirical measurement from the PV module(array) under investigation.
机译:最重要的投资决定在实现商业或私营应用的光伏(PV)阵列方面,是能量(LCoE)计算的稳定成本。作为评估工具的LCoe,以计算与规定时间的投资回报的能量产生的成本效益,可以通过简单的数学方程来计算;如果阵列中的PV模块的适当系统动态建模和性能预测,它仍然是无法实现的。光伏电池是不可预测的,具有非常低的转换效率为约15-25 %,这使得通常需要最大功率点跟踪(MPPT)系统集成到PV模块以获得最佳能量产量。这将返回,使得模块级别的PV阵列的输出功率和性能预测是至关重要的,以PV太阳能系统设计和实现的前兆建立。这是PV发生器维持有效能量生产的关键,因为它有助于检测光伏模块的直流电源是否处于最佳状态。事实上;准确预测PV阵列功率输出的性能是非常具有挑战性的,由于太阳能缺失,太阳入射角,温度,PV阵列配置,灰尘和非均匀照明等因素等因素。所有这些因素在光伏模块中产生非线性输出特性,导致光伏基础设施的能源产量,故障,损失和昂贵维护中的不稳定。该研究研究提出了一种用于阵列中PV模块的性能预测的方法。它涉及使用具有三层(输入,隐藏和输出)的神经网络模型,以在均匀和不均匀的照明(阴影条件)下预测PV模块能量产量。考虑典型数据,如开路电压(VOC),短路电流(ISC),太阳能缺失和细胞温度。训练数据集是从PV的正在调查中获得,并使用BackProjagation算法应用于神经网络来训练数据集。通过将预测的神经网络输出功率与来自PV模块(阵列)的经验测量进行比较,验证PV模块(阵列)最大输出功率性能评估。

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