基于LSTM和随机森林方法的印度东北地区太阳能发电日前预测

N. Roy, P. Tripathy, Samar Chandra De, Bimal Swargiary, Subhash Kumar, Sangita Das, Namrata Pathak
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引用次数: 1

摘要

近年来,世界范围内可再生能源的装机容量有了巨大的增长。印度还致力于生产可再生能源,这是满足其不断增长的电力需求的主要能源。目前,虽然该国的太阳能总装机容量约为58吉瓦,平均日发电量约为200亩,但截至2022年,该国东北地区(NER)的太阳能装机容量仅为204兆瓦。阿萨姆邦是东北邦中安装太阳能光伏(PV)独立太阳能公园的领先邦之一,该太阳能公园与高压系统相连,装机容量为199兆瓦。在未来增加更多的太阳能发电能力方面,NER有巨大的潜力。在本文中,考虑到NER的可用天气数据,使用长短期记忆(LSTM)和随机森林(RF)方法预测了阿萨姆邦Rowta光伏电站一周内的分段(15分钟)提前太阳能发电量。本文的目的是为系统运营商和发电公司提供一种可靠的预测方法,以简化日前太阳能发电的预测过程。在总体预测误差方面,LSTM是比随机森林方法更好的预测技术。该方法通过Rowta光伏电站的SCADA数据进行了验证。进一步将LTSM方法的性能与预测领域另一种流行的人工神经网络方法带外生输入的NARX方法进行了比较。本文还介绍了这两种方法对某天的预报结果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Day-ahead Solar Power Generation Forecasting using LSTM and Random Forest Methods for North Eastern Region of India
A tremendous increase in the renewable energy capacity addition worldwide has been observed in the recent times. India is also aiming to make renewables, the major source of power to meet its ever-increasing power demand. At present, while the total solar installed capacity of the country is around 58 GW with a daily average generation of around 200 MU, the North Eastern Region (NER) of the country has only 204 MW of solar power installed capacity as in the year 2022. Assam is one of the leading states in NER for installing solar photovoltaic (PV) independent solar parks connected to high voltage systems with an installed capacity of 199 MW. There is a huge potential in NER for adding more solar power capacity in the future. In this paper, Block-wise (15-minutes) Day ahead Solar Power generation is forecasted for Rowta PV plant in Assam using Long Short Term Memory (LSTM) and Random Forest (RF) methods for a week considering the available weather data of NER. The objective of this paper is to provide a reliable method of forecasting for System Operators and Generating utilities that can ease the process of day ahead solar power forecasting. In terms of overall forecasting error, LSTM emerges as the better forecasting technique compared to Random Forest method. The approach is validated through SCADA data from Rowta PV plant. The performance of LTSM method is further compared with NARX with exogenous input method, another popular ANN method in the field of forecasting. Forecast results by these two methods for a day have also been presented in this paper.
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