微控制器
改装
计算机科学
树莓皮
物联网
米
体积热力学
实时计算
计算机硬件
嵌入式系统
人工智能
工程类
天文
量子力学
结构工程
物理
作者
Ashwin Lall,Ankush Khandelwal,Rohit Bose,Nilesh Bawankar,Nitin Nilesh,Ayush Kumar Dwivedi,Shilpa Chaudhari
标识
DOI:10.1109/ficloud49777.2021.00030
摘要
This paper introduces an internet-of-things (IoT) based economic retrofitting setup for digitising the analog water meters to make them smart. The setup contains a Raspberry-Pi microcontroller and a Pi-camera mounted on top of the analog water meter to take its images. The captured images are then preprocessed to estimate readings using a machine learning (ML) model. The employed ML algorithm is trained on a rich dataset that includes digits from the images of water meters captured by the hardware setup for ten days. The readings are posted on a cloud server in real-time using Raspberry-Pi. High temporal resolution plots of flow rate and volume are generated to derive inferences. The collected data can be used for deriving water consumption patterns and fault detection for efficient water management.
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