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BBO-based small autonomous hybrid power system optimization incorporating wind speed and solar radiation forecasting

机译:结合风速和太阳辐射预测的基于BBO的小型自主混合动力系统优化

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Rising carbon emission or carbon footprint imposes grave concern over the earth's climatic condition, as it results in increasing average global temperature. Renewable energy sources seem to be the favorable solution in this regard. It can reduce the overall energy consumption rate globally. However, the renewable sources are intermittent in nature with very high initial installation price. Off-grid Small Autonomous Hybrid Power Systems (SAHPS) are good alternative for generating electricity locally in remote areas, where the transmission and distribution of electrical energy generated from conventional sources are otherwise complex, difficult and costly. In optimizing SAHPS, weather data over past several years are generally the main input, which include wind speed and solar radiation. The weather resources used in this optimization process have unsystematic variations based on the atmospheric and seasonal phenomenon and it also varies from year to year. While using past data in the analysis of SAHPS performance, it was assumed that the same pattern will be followed in the next year, which in reality is very unlikely to happen. In this paper, we use BBO optimization algorithm for SAHPS optimal component sizing by minimizing the cost of energy. We have also analysed the effect of using forecast weather data instead of past data on the SAHPS performance. ANNs, which are trained with back-propagation training algorithm, are used for wind speed and solar radiation forecasting. A case study was used for demonstrating the performance of BBO optimization algorithm along with forecasting effects. The simulation results clearly showed the advantages of utilizing wind speed and solar radiation forecasting in a SAHPS optimization problem.
机译:碳排放量的增加或碳足迹的增加使地球的气候状况受到严重关注,因为这会导致全球平均温度升高。在这方面,可再生能源似乎是有利的解决方案。它可以降低全球总体能源消耗率。但是,可再生能源本质上是间歇性的,初始安装价格很高。离网小型自治混合动力系统(SAHPS)是在偏远地区本地发电的良好选择,在偏远地区,传统能源产生的电能的传输和分配非常复杂,困难且成本高昂。在优化SAHPS时,过去几年的天气数据通常是主要输入数据,其中包括风速和太阳辐射。此优化过程中使用的天气资源会根据大气和季节现象而出现非系统性变化,并且每年都会变化。在使用过去的数据进行SAHPS绩效分析时,假设明年将遵循相同的模式,但实际上这种情况极不可能发生。在本文中,我们使用BBO优化算法通过最小化能源成本来实现SAHPS最优组件的选型。我们还分析了使用天气预报数据代替过去的数据对SAHPS性能的影响。经过反向传播训练算法训练的人工神经网络用于风速和太阳辐射的预测。案例研究用于说明BBO优化算法的性能以及预测效果。仿真结果清楚地表明了在SAHPS优化问题中利用风速和太阳辐射预测的优势。

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