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Harmonics Measurement Analysis for a Stand Alone Photovoltaic System with Linear and Non-Linear Loads
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作者 Hamisu Usman Ramatu Aliyu Abarshi Sani M. Lawal 《材料科学与工程(中英文A版)》 2014年第5期183-189,共7页
关键词 光伏发电系统 非线性负载 谐波失真 测量分析 独立光伏系统 电能质量分析仪 可再生能源 电子转换器
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IoT-based monitoring and data-driven modelling of drip irrigation system for mustard leaf cultivation experiment
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作者 Emmanuel Abiodun Abioye Mohammad Shukri Zainal Abidin +5 位作者 Mohd Saiful Azimi Mahmud Salinda Buyamin Muhammad Khairie Idham AbdRahman Abdulrahaman Okino Otuoze Muhammad Shahrul Azwan Ramli Ona Denis Ijike 《Information Processing in Agriculture》 EI 2021年第2期270-283,共14页
The changing dynamics,non-linearity of soil moisture content,as well as other weather and plant variables requires real-time monitoring and accurate predictive model for effective irrigation and crop management.In thi... The changing dynamics,non-linearity of soil moisture content,as well as other weather and plant variables requires real-time monitoring and accurate predictive model for effective irrigation and crop management.In this paper,an improved monitoring and datadriven modelling of the dynamics of parameters affecting the irrigation of mustard leaf plant is presented.An IoT-based monitoring framework is implemented using ESPresso Lite V2.0 module interfaced with different soil moisture sensors(VH-400),flowmeter(YF-S201)as well as Davis vantage pro 2 weather station to measure soil moisture content,irrigation volume,and computation of the reference evapotranspiration(ETo).The data collected including plant images were transmitted to the Raspberry Pi 3 controller for onward online storage and the data are displayed on the IoT dashboard.The combination of both soil moisture and ETo values was used for scheduling a drip irrigated plant grown in a greenhouse for 35 days.A total number of 20,703 experimental data samples are collected from the IoT-based platform was further used for data driven modelling through system identification in MATLAB.The result shows the development of different predictive models for soil moisture content prediction.The ARX prediction model is found to perform better than the ARMX,BJ and State space model in terms of estimated fit of 91.31%,91.09%,91.08%,and 90.75%respectively.Therefore,a robust monitoring framework for irrigation system has been developed,while the performance of the identified ARX model is promising to predict the volumetric soil water content. 展开更多
关键词 Internet of Things Precision Irrigation System Identification Predictive Model MONITORING Control MATLAB
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