Water management is critical to any economy's growth and development, particularly in growing economies like India.
However, due to excessive groundwater exploitation in the process of socioeconomic development and to meet the
increased needs of the growing population, the resource is currently under stress. As a result, we should make use of this valuable resource while
also conserving it. The basic goal of this study is to give a broad review of rainwater collecting systems and groundwater, as well as their possible
uses in everyday life. Many countries have implemented rainwater harvesting as a long-term strategy to complement public water supplies. Many
water-related issues have been overcome thanks to the RWH system. Another source of water that can be counted on is groundwater.
This paper depicts the design and implementation of a multi-level, multi-faceted software and hardware architecture that we have used to create a swarm of intelligent robots that can communicate basic instructions to each other. We have several layers in the architecture that can control a particular part of the system, with humans as the major drivers for the whole system. The individual rovers can navigate autonomously and avoid obstacles in their way. Our system utilizes several microcontrollers and companion computers such as Raspberry Pi, Pixhawk Flight Controller, and Arduino Mega Microcontroller. We have also done the circuit design and PCB implementation for the rovers. We have conducted this project as a proof of concept for the feasibility of Surveillance Robots. A swarm of intelligent robots would undoubtedly be helpful in situations such as disaster management and search and rescue missions.
This paper describes the design and implementation of a deployable, multi-modal system executed using Deep Learning with Computer Vision. The system was majorly created using Transfer Learning Algorithms, GoogleNet, and MATLAB, which were then made portable and deployable using a Raspberry Pi with Pi Cam. The neural networks were trained on a dataset consisting of several images and is highly accurate. This system consists of Fire Detection, Face and Intruder Detection, Object Identification, and Animal Identification, and follow me features which are meant to be deployed on a mobile robot such as an autonomous rover, drone, glider, and aquatic robot
scite is a Brooklyn-based organization that helps researchers better discover and understand research articles through Smart Citations–citations that display the context of the citation and describe whether the article provides supporting or contrasting evidence. scite is used by students and researchers from around the world and is funded in part by the National Science Foundation and the National Institute on Drug Abuse of the National Institutes of Health.