| Literature DB >> 29693611 |
Carlos Cambra1, Sandra Sendra2,3, Jaime Lloret4, Raquel Lacuesta5.
Abstract
Improving the sustainability in agriculture is nowadays an important challenge. The automation of irrigation processes via low-cost sensors can to spread technological advances in a sector very influenced by economical costs. This article presents an auto-calibrated pH sensor able to detect and adjust the imbalances in the pH levels of the nutrient solution used in hydroponic agriculture. The sensor is composed by a pH probe and a set of micropumps that sequentially pour the different liquid solutions to maintain the sensor calibration and the water samples from the channels that contain the nutrient solution. To implement our architecture, we use an auto-calibrated pH sensor connected to a wireless node. Several nodes compose our wireless sensor networks (WSN) to control our greenhouse. The sensors periodically measure the pH level of each hydroponic support and send the information to a data base (DB) which stores and analyzes the data to warn farmers about the measures. The data can then be accessed through a user-friendly, web-based interface that can be accessed through the Internet by using desktop or mobile devices. This paper also shows the design and test bench for both the auto-calibrated pH sensor and the wireless network to check their correct operation.Entities:
Keywords: Internet of Things (IoT); hydroponic agriculture; potential of hydrogen (pH) sensor; precision agriculture; smart farming; wireless sensor networks (WSNs)
Year: 2018 PMID: 29693611 PMCID: PMC5981803 DOI: 10.3390/s18051333
Source DB: PubMed Journal: Sensors (Basel) ISSN: 1424-8220 Impact factor: 3.576
Figure 1Auto-calibrated pH sensor and wireless node.
Values of acid density and purity of the two acid types in our model.
| Acid Density (kg/dm3) | % Purity Phosphorous Acid | % Purity Nitric Acid |
|---|---|---|
| 1 | 16 | 15 |
| 1.1 | 18 | 18 |
| 1.15 | 26 | 24 |
| 1.2 | 34 | 33 |
| 1.25 | 40 | 40 |
| 1.3 | 46 | 48 |
| 1.35 | 53 | 56 |
| 1.4 | 57 | 65 |
| 1.45 | 63 | 77 |
| 1.5 | 68 | 95 |
| 1.55 | 73 | 100 |
Figure 2Network architecture.
Figure 3Flow diagram of our intelligent diagnosis algorithm.
Figure 4pH of water.
Figure 5EC of water.
Figure 6Data collected on node 3.
Figure 7Evolution of pH values as a function of the time.
Figure 8Experimental network setup in greenhouse.
Figure 9Network traffic, point to point.
Figure 10Radio node current consumption.