Solar Energy Prediction Based on Intelligent Predictive Controller Algorithm

L. Savarimuthu, Kirubakaran Victor, Preethi Davaraj, Ganeshan Pushpanathan, Raja Kandasamy, Ramshankar Pushpanathan, M. Vinayagam, Sachuthananthan Barathy, Vivek Sivakumar
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Abstract

The technological advancement in all countries leads to massive energy demand. The energy trading companies struggle daily to meet their customers’ power demands. For a good quality, disturbance-free, and reliable power supply, one must balance electricity generation and consumption at the grid level. There is a profound change in distribution networks due to the intervention of renewable energy generation and grid interactions. Renewable energy sources like solar and wind depend on environmental factors and are subject to unpredictable variations. Earlier, energy distribution companies faced a significant challenge in demand forecasting since it is often unpredictable. With the prediction of the ever-varying power from renewable sources, the power generation and distribution agencies are facing a challenge in supply-side predictions. Several forecasting techniques have evolved, and machine learning techniques like the model predictive controller are suitable for arduous tasks like predicting weather-dependent power generation in advance. This paper employs a Model Predictive Controller (MPC) to predict the solar array’s power. The proposed method also includes a system identification algorithm, which helps acquire, format, validate, and identify the pattern based on the raw data obtained from a PV system. Autocorrelation and cross-correlation value between input and predicted output 0.02 and 0.15. The model predictive controller helps to recognize the future response of the corresponding PV plant over a specific prediction horizon. The error variation of the predicted values from the actual values for the proposed system is 0.8. The performance analysis of the developed model is compared with the former existing techniques, and the role and aptness of the proposed system in smart grid digitization is also discussed.
基于智能预测控制器算法的太阳能预测
所有国家的技术进步都导致了巨大的能源需求。能源贸易公司每天都在努力满足客户的电力需求。要想获得优质、无干扰和可靠的电力供应,就必须在电网层面平衡发电和用电。由于可再生能源发电的介入和电网的相互作用,配电网发生了深刻的变化。太阳能和风能等可再生能源依赖于环境因素,变化难以预测。此前,能源配送公司在需求预测方面面临着巨大挑战,因为需求往往是不可预测的。随着可再生能源发电量的不断变化,发电和配电机构在供应方预测方面也面临着挑战。目前已发展出多种预测技术,而像模型预测控制器这样的机器学习技术则适用于提前预测受天气影响的发电量等艰巨任务。本文采用模型预测控制器(MPC)来预测太阳能电池阵列的功率。所提出的方法还包括系统识别算法,该算法有助于根据从光伏系统获取的原始数据获取、格式化、验证和识别模式。输入和预测输出之间的自相关和交叉相关值分别为 0.02 和 0.15。模型预测控制器有助于识别相应光伏电站在特定预测范围内的未来响应。拟议系统的预测值与实际值的误差变化为 0.8。对所开发模型的性能分析与现有技术进行了比较,并讨论了所提议系统在智能电网数字化中的作用和适用性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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