Off-grid technologies, such as solar home systems (SHS), offer the opportunity to alleviate global energy poverty, providing a cost-effective alternative to an electricity grid connection. However, there is a paucity of high-quality SHS electricity usage data and thus a limited understanding of consumers’ past and future usage patterns. This study addresses this gap by providing a rare large-scale analysis of real-time energy consumption data for SHS customers (n = 63,299) in Rwanda. Our results show that 70% of SHS users’ electricity usage decreased a year after their SHS was installed. This paper is novel in its application of a three-dimensional convolutional neural network (CNN) architecture for electricity load forecasting using time s...
Energy and power production are essential to daily life. By the year 2030, HECO desires to increase ...
Abstract The electricity consumption related to the civil sector (residential and tertiary) in the m...
There has been a significant increase in the attention paid to resource management in smart grids, a...
Off-grid technologies, such as solar home systems (SHS), offer the opportunity to alleviate global e...
Universal, affordable and reliable electricity remains a key pillar towards achieving Sustainable De...
Smart grids and smart homes are getting people\u27s attention in the modern era of smart cities. The...
© 2020 by the authors. Licensee MDPI, Basel, Switzerland. The integration of more renewable energy r...
By virtue of the steady societal shift to the use of smart technologies built on the increasingly po...
In the fast-growing market of decentralised energy systems, stand-alone PV Solar Home Systems (SHSs)...
In this work, two deep learning models based on convolutional neural networks (CNNs) are developed ...
The use of electricity has a significant impact on the environment, energy distribution costs, and e...
Pay-as-you-go (PAYGo) financing models play a vital role in boosting the distribution of solar-home-...
Though extensive, the literature on electrical load forecasting lacks reports on studies focused on ...
Abstract: This work proposes the use of Artificial Neural Network (ANN) as a new approach to determi...
This paper presents time series forecasting models Forecaster Autoreg and Neural Network for predict...
Energy and power production are essential to daily life. By the year 2030, HECO desires to increase ...
Abstract The electricity consumption related to the civil sector (residential and tertiary) in the m...
There has been a significant increase in the attention paid to resource management in smart grids, a...
Off-grid technologies, such as solar home systems (SHS), offer the opportunity to alleviate global e...
Universal, affordable and reliable electricity remains a key pillar towards achieving Sustainable De...
Smart grids and smart homes are getting people\u27s attention in the modern era of smart cities. The...
© 2020 by the authors. Licensee MDPI, Basel, Switzerland. The integration of more renewable energy r...
By virtue of the steady societal shift to the use of smart technologies built on the increasingly po...
In the fast-growing market of decentralised energy systems, stand-alone PV Solar Home Systems (SHSs)...
In this work, two deep learning models based on convolutional neural networks (CNNs) are developed ...
The use of electricity has a significant impact on the environment, energy distribution costs, and e...
Pay-as-you-go (PAYGo) financing models play a vital role in boosting the distribution of solar-home-...
Though extensive, the literature on electrical load forecasting lacks reports on studies focused on ...
Abstract: This work proposes the use of Artificial Neural Network (ANN) as a new approach to determi...
This paper presents time series forecasting models Forecaster Autoreg and Neural Network for predict...
Energy and power production are essential to daily life. By the year 2030, HECO desires to increase ...
Abstract The electricity consumption related to the civil sector (residential and tertiary) in the m...
There has been a significant increase in the attention paid to resource management in smart grids, a...