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RFID Moisture

mattguo5 edited this page Mar 13, 2020 · 45 revisions

RFID Moisture | Updates | Github

Project Leads:

Calibration Lead: Brett Stoddard

Electrical Lead: Matt Guo

Mechanical Lead: Max Chu

Overview

Objectives

OPEnS RFID aims to address common overwatering and financially demanding issues to agricultural grown by providing a cheap, wireless, battery-less solution to large area moisture sensing. OPEnS RFID integrates the newest advances in ultra-high frequency (UHF) radio frequency identification (RFID) technology into our sensors, which make them a fraction of the cost of other sensors. When set up on an irrigation boom at a common greenhouse, all moisture processing can be done locally onboard a powerful microcontroller, allowing for precise and autonomous control over the watering of these crops.

Current Problem

Overwatering is ubiquitous in agriculture. Whole fields are grossly overwatered to ensure that no single plant experiences water stress. Farmers typically overwater their crops by 20-50% as a precautionary measure6. Higher yields and low water costs make this behavior rational. However, recent improvements in water sensors and precision irrigation will make it possible to significantly reduce agricultural water use while maintaining yields.

According to the World Wildlife Fund, agriculture consumes 70% of the planet’s accessible freshwater1. For comparison, 8% of water is used municipally for drinking, sewage and industry. In water strained regions like California, Northern China, and Pakistan, increasing agricultural and municipal demands compete for a finite waters supply.

Another impact of overwatering is agricultural runoff. When soil is oversaturated, the resulting runoff carries environmentally hazardous pollutants and fertilizer into local water systems. Fertilizers consist of nitrogen-based compounds that are harmful to freshwater ecosystems. This runoff also depletes soil of its nutrients, further exacerbating the need for fertilizer.

Precision irrigation systems exist and can substantially reduce agricultural water use; the current bottleneck for these systems is soil moisture data. Without corresponding moisture data the water savings for these systems largely go unrealized. The soil moisture sensors that exist are either too costly, obstructive, or too inaccurate to use in conjunction with precision irrigation. In the following section we describe these limitations.

Current Solutions

The two primary solutions for soil moisture data have been capacitance probes and satellite imaging. Capacitance probes are the industry standard for taking cheap, accurate soil moisture measurements; however, capacitance probes require a continuous supply of power and often need to be checked manually. These sensors are relatively cheap but installing the number of probes necessary for a precision irrigation grid is costly. For these reasons capacitance probes are impractical for large area moisture sensing.

Satellite imaging is a cost-effective solution, but the results from these images come sporadically (less than once per day) and have low granularity (measure on a hectare scale). For these reasons they are ineffective for managing water usage on a day-to-day basis.

Outcomes

Proven Correlation with the 5TM Moisture Sensor

After conducting 48 trials at 9 moisture levels, the data showed a correlation between the RFID tag's sensor values and the 5TM's measure of relative permittivity. This implies that SmarTrac's Dogbone RFID tags are sensitive enough to be used as a moisture sensor. Using the linear, empirically derived equation to map the RFID values to the 5TM,g(x), and then the Topp  equation (Topp et al 1980) to map from relative permittivity to volumetric water content (VWC),f(x), the equation relating the RFID to VWC is below:

f(g(x)) = -8.82803×10^-8x^3 -2.4733710^-5x^2 -3.8844710^-3*x+0.306477

Field Testing

After the correlation was proven in the lab, the team traveled up to OSU's Hermiston Agriculture Research Center to conduct field tests. Using a portable version of the RFID reader that sent data to a companion app over Bluetooth, we read the RFID tags and moisture values as a center pivot irrigation arm passed over. Using this app, we were able to visualize the water seeping down to the depth of the tag.

Future

Market Opportunity

Total Available Market (TAM): International capital-intensive agriculture. Regions that use modern agricultural practices are more likely to adopt our sensor system. To realize the full water savings, it is necessary that the OPEnS RFID System work in tandem with high-precision irrigation systems. Places and industry segments which already use applied irrigation are more likely to adopt our system. For example, center pivots can be easily retrofitted with variable rate nozzles and variable rate rotation motors to provide high precision water application. TAM.PNG

Serviceable Available Market (SAM): Agriculture in California and the Pacific Northwest. Most US agricultural output occurs between the two aforementioned regions. OPEnS Sensors would be ideal for roughly $14 billion of agricultural output.

Serviceable Obtainable Market (SOM): Our first market will be focused on potato growers in Southeastern Washington and Northeastern Oregon, with a regional agricultural annual output of approximately $650 million. We plan to capture 20% of this market in the first two years of commercial production.

It will be a priority for our company to get endorsed by the Potato Commission of Oregon and Washington which will greatly expedite adoption. After the system is tested using potatoes, an ideal crop, we intend to branch out to other water intensive crops with and without canopies.

RFID Irrigation Project

This project paved the way for the RFID Irrigation Project that partners with Peoria Gardens. This project uses the RFID Soil Moisture Tags to control the irrigation boom at Peoria Gardens.

Resource List

Tutorials

Keywords

  • RFID

  • Dogbone

  • Soil Sensor

References

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