2021
DOI: 10.1002/2050-7038.12706
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Comparative analysis of machine learning algorithms for prediction of smart grid stability

Abstract: The global demand for electricity has visualized high growth with the rapid growth in population and economy. It thus becomes necessary to efficiently distribute electricity to households and industries in order to reduce power loss. Smart Grids (SG) have the potential to reduce such power losses during power distribution. Machine learning and artificial intelligence techniques have been successfully implemented on SGs to achieve enhanced accuracy in customer demand prediction. There exists a dire need to anal… Show more

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Cited by 68 publications
(30 citation statements)
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“…The trained sample is used to support EA-ABC to perform better in Stage 2. SVM is a classification algorithm which extends the capabilities of Machine Learning (ML) based on the selection method which is also known as kernel functions [37,38]. It creates a repository which incorporates two types of categories namely Above Post Performance (APP) and Below Post Performance (BPP).…”
Section: Stagementioning
confidence: 99%
“…The trained sample is used to support EA-ABC to perform better in Stage 2. SVM is a classification algorithm which extends the capabilities of Machine Learning (ML) based on the selection method which is also known as kernel functions [37,38]. It creates a repository which incorporates two types of categories namely Above Post Performance (APP) and Below Post Performance (BPP).…”
Section: Stagementioning
confidence: 99%
“…Smart grids generate large quantity of data at a very rapid pace. ML algorithms can be used on this data to analyze the patterns and predict the electricity demand, power outages, stability of the smart grid, electricity theft, etc [93]. However, the traditional approach of transferring the data from the smart grid to the central cloud and then applying ML algorithms involves several challenges such as increased latency, exposing of sensitive and private data of the customers/grid to the potential hackers, etc [94].…”
Section: Federated Learning Enabled Big Data In Smart Gridmentioning
confidence: 99%
“…Wong [12] brings a good visual impression by harmonizing with the landscape of the big environment, which makes people have a strong sense of belonging to the living environment and admire the beautiful environment. Wei [13] thinks "Only landscape plant lighting with outstanding style and characteristics can be regarded as excellent works." According to the understanding of plant landscape design style, it puts forward "the logical analysis diagram of plant lighting design thinking."…”
Section: Research Status At Home and Abroadmentioning
confidence: 99%