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Soil Characterization of Watermelon Field through Internet of Things: A New Approach to Soil Salinity Measurement

Rahman, Md. Naimur, Sozol, Shafak Shahriar, Samsuzzaman, Md., Hossin, Md. Shahin, Islam, Mohammad Tariqul, Islam, S. M. Taohidul, Maniruzzaman, Md.

arXiv.org Artificial Intelligence

In the modern agricultural industry, technology plays a crucial role in the advancement of cultivation. To increase crop productivity, soil require some specific characteristics. For watermelon cultivation, soil needs to be sandy and of high temperature with proper irrigation. This research aims to design and implement an intelligent IoT-based soil characterization system for the watermelon field to measure the soil characteristics. IoT based developed system measures moisture, temperature, and pH of soil using different sensors, and the sensor data is uploaded to the cloud via Arduino and Raspberry Pi, from where users can obtain the data using mobile application and webpage developed for this system. To ensure the precision of the framework, this study includes the comparison between the readings of the soil parameters by the existing field soil meters, the values obtained from the sensors integrated IoT system, and data obtained from soil science laboratory. Excessive salinity in soil affects the watermelon yield. This paper proposes a model for the measurement of soil salinity based on soil resistivity. It establishes a relationship between soil salinity and soil resistivity from the data obtained in the laboratory using artificial neural network (ANN).


Federated Learning Approach to Mitigate Water Wastage

Ahmadi, Sina Hajer, Mahashabde, Amruta Pranadika

arXiv.org Artificial Intelligence

Residential outdoor water use in North America accounts for nearly 9 billion gallons daily, with approximately 50\% of this water wasted due to over-watering, particularly in lawns and gardens. This inefficiency highlights the need for smart, data-driven irrigation systems. Traditional approaches to reducing water wastage have focused on centralized data collection and processing, but such methods can raise privacy concerns and may not account for the diverse environmental conditions across different regions. In this paper, we propose a federated learning-based approach to optimize water usage in residential and agricultural settings. By integrating moisture sensors and actuators with a distributed network of edge devices, our system allows each user to locally train a model on their specific environmental data while sharing only model updates with a central server. This preserves user privacy and enables the creation of a global model that can adapt to varying conditions. Our implementation leverages low-cost hardware, including an Arduino Uno microcontroller and soil moisture sensors, to demonstrate how federated learning can be applied to reduce water wastage while maintaining efficient crop production. The proposed system not only addresses the need for water conservation but also provides a scalable, privacy-preserving solution adaptable to diverse environments.


Optimizing Irrigation Efficiency using Deep Reinforcement Learning in the Field

Ding, Xianzhong, Du, Wan

arXiv.org Artificial Intelligence

Agricultural irrigation is a significant contributor to freshwater consumption. However, the current irrigation systems used in the field are not efficient. They rely mainly on soil moisture sensors and the experience of growers, but do not account for future soil moisture loss. Predicting soil moisture loss is challenging because it is influenced by numerous factors, including soil texture, weather conditions, and plant characteristics. This paper proposes a solution to improve irrigation efficiency, which is called DRLIC. DRLIC is a sophisticated irrigation system that uses deep reinforcement learning (DRL) to optimize its performance. The system employs a neural network, known as the DRL control agent, which learns an optimal control policy that considers both the current soil moisture measurement and the future soil moisture loss. We introduce an irrigation reward function that enables our control agent to learn from previous experiences. However, there may be instances where the output of our DRL control agent is unsafe, such as irrigating too much or too little water. To avoid damaging the health of the plants, we implement a safety mechanism that employs a soil moisture predictor to estimate the performance of each action. If the predicted outcome is deemed unsafe, we perform a relatively-conservative action instead. To demonstrate the real-world application of our approach, we developed an irrigation system that comprises sprinklers, sensing and control nodes, and a wireless network. We evaluate the performance of DRLIC by deploying it in a testbed consisting of six almond trees. During a 15-day in-field experiment, we compared the water consumption of DRLIC with a widely-used irrigation scheme. Our results indicate that DRLIC outperformed the traditional irrigation method by achieving a water savings of up to 9.52%.


🤖 Python with Raspberry Pi: An Introduction

#artificialintelligence

Codecademy's free Python course is a great way to get started with the language, as it provides a hands-on, interactive introduction to the syntax and features of Python.


AI magic bean could save farmers millions

#artificialintelligence

Farmers across the world could jack up giant profits using an Artificial Intelligence soil monitoring system developed at Brunel University London. By collecting data about soil and growing conditions, the'magic bean' helps farmers boost crops, cut waste and save time, money and water. It comes after France this year saw record temperatures of 49.5 ºC, the US had its wettest spring since 1995 and severe frost threatened Brazil's coffee harvest. The Brunel algorithms could help producers work around freak weather triggered by climate change and unplanned supply problems after Brexit. "We have a way of using data to make crops grow better, worldwide," said electronic engineer Dr Tatiana Kalganova.


Handheld scanner divines how nutritious your food really is

New Scientist

FARMERS can now zap their crops with a handheld scanner to instantly determine nutritional content, which could prove crucial in mitigating the effects of climate change on food quality. It also brings similar consumer gadgets a step closer – so we can find out what is in our food for ourselves. The device, called GrainSense, analyses wheat, oats, rye and barley by scanning a sample with various frequencies of near-infrared light. The amount of each type of light that is absorbed allows it to precisely determine the levels of protein, moisture, oil and carbohydrate in the grain. This technique has been used for decades in the lab, but this is the first time it has been available instantly on a handheld device.