Machine Learning based Soil VWC and Field Capacity Estimation Using Low Cost Sensors
Idrees Zaman, Nandit Jain, Anna F\"orster

TL;DR
This paper explores using machine learning with low-cost sensors to estimate soil water content and field capacity, aiming to reduce costs and validate data accuracy in wireless underground sensor networks for agriculture.
Contribution
It introduces a machine learning approach to estimate soil VWC using low-cost sensors, enhancing affordability and data validation in soil monitoring networks.
Findings
Low-cost sensors can effectively estimate VWC with minor accuracy trade-offs.
Neural Networks and Random Forests outperform traditional methods in VWC prediction.
Field experiments confirm the viability of low-cost sensors for soil moisture estimation.
Abstract
The amount of water present in soil is measured in terms of a parameter commonly referred to as Volumetric Water Content (VWC) and is used for determining the field capacity of any soil. It is an important parameter accounting for ensuring proper irrigation at plantation sites for farming as well as for afforestation activities. The current work is an extension to already going on research in the area of wireless underground sensor networks (WUSNs). Sensor nodes equipped with Decagon 5TM volumetric water content (VWC) and temperature sensor are deployed underground to understand the properties of soil for agricultural activities. The major hindrances in the deployment of such networks over a large field are the cost of VWC sensors and the credibility of the data being collected by these sensors. In this paper, we analyze the use of low-cost moisture and temperature sensors that can…
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Taxonomy
TopicsSoil Moisture and Remote Sensing · Indoor and Outdoor Localization Technologies · Smart Agriculture and AI
