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Stochastic and Statistical Analysis of Utility Revenues and Weather Data Analysis for Consumer Demand Estimation in Smart Grids

机译:公用事业收入的随机统计分析和用于智能电网中消费者需求估算的天气数据分析

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摘要

In smart grid paradigm, the consumer demands are random and time-dependent, owning towards stochastic probabilities. The stochastically varying consumer demands have put the policy makers and supplying agencies in a demanding position for optimal generation management. The utility revenue functions are highly dependent on the consumer deterministic stochastic demand models. The sudden drifts in weather parameters effects the living standards of the consumers that in turn influence the power demands. Considering above, we analyzed stochastically and statistically the effect of random consumer demands on the fixed and variable revenues of the electrical utilities. Our work presented the Multi-Variate Gaussian Distribution Function (MVGDF) probabilistic model of the utility revenues with time-dependent consumer random demands. Moreover, the Gaussian probabilities outcome of the utility revenues is based on the varying consumer n demands data-pattern. Furthermore, Standard Monte Carlo (SMC) simulations are performed that validated the factor of accuracy in the aforesaid probabilistic demand-revenue model. We critically analyzed the effect of weather data parameters on consumer demands using correlation and multi-linear regression schemes. The statistical analysis of consumer demands provided a relationship between dependent (demand) and independent variables (weather data) for utility load management, generation control, and network expansion.
机译:在智能电网范式中,消费者需求是随机且随时间变化的,具有随机概率。消费者需求的随机变化使决策者和供应机构处于最佳发电管理的苛刻位置。公用事业收益函数高度依赖于消费者确定性随机需求模型。天气参数的突然变化会影响消费者的生活水平,进而影响电力需求。综上所述,我们随机和统计地分析了随机消费者需求对电力公司固定和可变收入的影响。我们的工作提出了具有随时间变化的消费者随机需求的公用事业收益的多元高斯分布函数(MVGDF)概率模型。此外,公用事业收入的高斯概率结果基于变化的消费者n需求数据模式。此外,执行标准蒙特卡洛(SMC)仿真,验证了上述概率需求-收入模型中的准确性因素。我们使用相关性和多线性回归方案严格分析了天气数据参数对消费者需求的影响。消费者需求的统计分析为公用事业负荷管理,发电控制和网络扩展提供了因变量(​​需求)和自变量(天气数据)之间的关系。

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