Solar irradiance forecasting models using machine learning techniques and digital twin: A case study with comparison

Neha Sehrawat , Sahil Vashisht , Amritpal Singh
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引用次数: 3

Abstract

The ever-increasing demand for energy and power consumption due to population growth, economic expansion, and evolving consumer choices has led to the need for renewable energy sources. Traditional energy sources such as coal, oil, and gas have contributed to global pollution and have adverse effects on human health. As a result, the use of renewable energy for power generation has increased tremendously. One such area of research is solar irradiation prediction, which utilizes Artificial Intelligence and Machine Learning techniques. With the use of real-time predicted data, the digital twins are intended to add value to the organization by identifying and preventing problems, predicting performance, and improving operations. This paper provides an overview of various learning methods used for predicting irradiance and presents a new ensemble solar irradiance forecasting model that combines eight machine learning models to ensure model diversity. The model's most critical factors for predicting irradiance include temperature, cloudiness index, relative humidity, and day of the week. To conduct a comprehensive analysis, the proposed 8-Stacking Regression Cross Validation (8 STR-CV) model was tested using data from three different climatic zones in India. The model's high accuracy scores of 98.8% for Visakhapatnam, 98% for Nagpur, and 97.8% for the mountainous region make it a valuable tool for future prediction in various sectors, including power generation and utilization planning.

使用机器学习技术和数字孪生的太阳辐照度预测模型:一个案例研究和比较
由于人口增长、经济扩张和消费者选择的不断变化,对能源和电力消耗的需求不断增加,导致了对可再生能源的需求。煤炭、石油和天然气等传统能源造成了全球污染,并对人类健康产生了不利影响。因此,可再生能源发电的使用量大幅增加。其中一个研究领域是利用人工智能和机器学习技术的太阳辐射预测。通过使用实时预测数据,数字双胞胎旨在通过识别和预防问题、预测性能和改进运营来为组织增加价值。本文概述了用于预测辐照度的各种学习方法,并提出了一种新的集成太阳辐照度预测模型,该模型结合了八个机器学习模型,以确保模型的多样性。该模型预测辐照度的最关键因素包括温度、云量指数、相对湿度和一周中的哪一天。为了进行全面分析,使用来自印度三个不同气候带的数据对所提出的8叠加回归交叉验证(8 STR-CV)模型进行了测试。该模型在维萨卡帕特南、那格浦尔和山区的高准确率分别为98.8%、98%和97.8%,使其成为包括发电和利用规划在内的各个部门未来预测的宝贵工具。
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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