利用ML技术对Covid-19前后的生计进行培养分析

S. Mahendher, Shivam Singhal, Khazi Mohammed Owais, Maheshwaran S., B. Robin
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引用次数: 0

摘要

在各国封锁期间,能源部门是受到干扰的主要行业之一。这导致供需不平衡,给该行业带来了各种挑战。本文对影响居民用电量的因素和用电趋势的变化进行了全面的分析。该论文还包括了COVID封锁前后人们的心理健康状况。建立了两个模型,电力消耗的线性回归和心理健康的逻辑回归。他们使用各种技术进行了验证。这些模型的目的是帮助研究人员和爱好者更好地了解封锁期间影响电力消耗和心理健康的各种因素之间的关系。如果将来发生类似的事件,它们也可以用来预测结果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Fostering Analysis of Livelihood Pre and Post Covid-19 using ML Techniques
The energy sector is one of the major disrupted industries during the time of the lockdowns in all countries. This is causing an irregularity in supply and demand creating various challenges to the sector. The paper provides a comprehensive view on the factors affecting the power usage by the households and the change in trends of consumption of electricity. The paper also included the mental health of the people before and after the COVID lockdown. Two models were created, linear regression for power consumption and logistical regression for mental health. They were verified using various techniques. The purpose of these models is to help researchers and enthusiasts get a better idea about the relationship between various factors which are affecting the power consumption and mental health during the lockdown. They can also be used to predict the outcome if incase any similar event occurs in future.
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