基于自适应阈值法的光伏系统能量预测云量平均百分比检测

Eylia Nurdiana Ab Razak, M. Latip, N. Zaini, Beatrice Connie Majang, A. Asmat
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引用次数: 0

摘要

在过去的十年中,光伏(PV)技术已成为发展最快的可再生能源技术之一。然而,由于天气和云层遮挡导致的能量输出不同,这对公用事业公司有效利用太阳能将是一个挑战。太阳能发电商(SPP)也被要求提交太阳能光伏发电预测。在这种情况下,我们的研究旨在开发一种基于马来西亚半岛卫星图像分析云量百分比的方法。本研究选择自适应阈值法对卫星图像进行分类。自适应阈值算法是用Python编写的,用于检测云并分析马来西亚半岛从早上8点(0800)到晚上7点(1900)的平均云覆盖百分比。马来西亚半岛的平均云量百分比分析是根据频率云指数进行的,该指数由马来西亚半岛的最大平均云量百分比确定,从0%到60%。马来西亚半岛云量数据的平均百分比被用来分析两(2)个案例研究。第一个案例研究是对马来西亚半岛每个月的趋势、最大和最小云量进行分析,而第二个分析是分析2018年4月5日至2018年12月16日期间马来西亚半岛的趋势、最大和最小云量。通过分析,可以看出这种方法可以作为预测太阳辐照度对太阳能效率的初始过程。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Detection of Cloud Cover Average Percentage based on Adaptive Threshold Method for Energy Forecasting in Photovoltaic System
Over the past decade, photovoltaic (PV) technology has become one of the fastest-growing renewable energy technologies. However, due to the different energy outputs according to the weather and solar occlusion by the clouds, this will be a challenge for utility companies to use solar energy effectively. Solar Power Producers (SPP) are also asked to submit solar PV generation forecasts. In this context, our study aims to develop a method of analyzing the percentage of cloud cover based on satellite images of peninsular Malaysia. The Adaptive Threshold method is chosen to be used in this study to classify satellite images. The Adaptive Threshold algorithm is coded in Python to detect clouds and analyze the average percentage of cloud cover in Peninsular Malaysia from 8 am (0800) to 7 pm (1900). The analysis of the average percentage of cloud cover in Peninsular Malaysia is done based on the Frequency Cloud Index which has been identified by the maximum average percentage of cloud cover in Peninsular Malaysia which is from 0% to 60%. The average percentage of cloud cover data in Peninsular Malaysia was used to analyze two (2) case studies. The first case study is an analysis for each month to see the trends, maximum and minimum cloud cover in Peninsular Malaysia while the second analysis is to analyze the trend, maximum and minimum cloud cover in Peninsular Malaysia throughout the year from 5 April 2018 to 16 December 2018. Through analysis made, such an approach is seen can be used as an initial process in making predictions about solar irradiance towards solar energy efficiency.
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