| Literature DB >> 29584703 |
Iván García-Magariño1,2, Raquel Lacuesta3,4, Jaime Lloret5.
Abstract
Smart communication protocols are becoming a key mechanism for improving communication performance in networks such as wireless sensor networks. However, the literature lacks mechanisms for simulating smart communication protocols in precision agriculture for decreasing production costs. In this context, the current work presents an agent-based simulator of smart communication protocols for efficiently managing pesticides. The simulator considers the needs of electric power, crop health, percentage of alive bugs and pesticide consumption. The current approach is illustrated with three different communication protocols respectively called (a) broadcast, (b) neighbor and (c) low-cost neighbor. The low-cost neighbor protocol obtained a statistically-significant reduction in the need of electric power over the neighbor protocol, with a very large difference according to the common interpretations about the Cohen's d effect size. The presented simulator is called ABS-SmartComAgri and is freely distributed as open-source from a public research data repository. It ensures the reproducibility of experiments and allows other researchers to extend the current approach.Entities:
Keywords: agent-based simulation; agent-oriented software engineering; agriculture; multi-agent system; sensor network; smart communication protocols, agent-based social simulation
Year: 2018 PMID: 29584703 PMCID: PMC5948856 DOI: 10.3390/s18040998
Source DB: PubMed Journal: Sensors (Basel) ISSN: 1424-8220 Impact factor: 3.576
Figure 1User interface (UI) of ABS-SmartComAgri.
Figure 2Class diagram of the excerpt of ABS-SmartComAgri concerning its agent types.
Figure 3Functional block diagram of the smart neighbor strategy.
Figure 4Functional block diagram of the smart low-cost neighbor strategy.
Input parameter values of the experiments.
| Input Parameter | Value |
|---|---|
| Initial number of affected areas | 2 |
| Columns of precision agriculture sensors | 10 |
| Rows of precision agriculture sensors | 16 |
| Ecosystem probability of increasing bugs per hour | 0.10 |
| Duration of simulation (hours) | 48 |
Results of the three communication protocols considering the means and SDs of 100 simulation executions for each one.
| Power (kW) | Crop Health (%) | Alive Bugs (%) | Pesticide (mL) | |
|---|---|---|---|---|
| Broadcast | 144.64 (24.88) | 99.77 (0.07) | 2.09 (6.56) | 888 (365.23) |
| Neighbor | 88.81 (4.28) | 99.75 (0.10) | 3.83 (8.60) | 63.14 (25.03) |
| Low-cost Neighbor | 67.64 (2.96) | 99.20 (0.36) | 6.13 (10.46) | 74.77 (26.48) |
Figure 5Boxplots for comparing the three communication protocol strategies.
Robust tests of equality of means for comparing the three strategies.
| Statistic | df1 | df2 | Sig. | ||
|---|---|---|---|---|---|
| Power | Welch | 1216.406 | 2 | 170.104 | 0.000 ** |
| Brown–Forsythe | 734.968 | 2 | 107.748 | 0.000 ** | |
| Crop health | Welch | 119.561 | 2 | 173.960 | 0.000 ** |
| Brown–Forsythe | 215.668 | 2 | 122.570 | 0.000 ** | |
| Alive bugs | Welch | 5.498 | 2 | 190.944 | 0.005 * |
| Brown–Forsythe | 5.436 | 2 | 263.117 | 0.005 * | |
| Pesticide consumption | Welch | 255.165 | 2 | 176.104 | 0.000 ** |
| Brown–Forsythe | 498.034 | 2 | 100.975 | 0.000 ** |
Asymptotically F distributed; * statistically significant with a significance level of 0.01; ** statistically significant with a significance level of 0.001; Sig. denotes significance (p-value).
Robust tests of the equality of means for comparing neighbor and low-cost neighbor strategies.
| Statistic | df1 | df2 | Sig. | ||
|---|---|---|---|---|---|
| Power | Welch | 1654.441 | 1 | 175.990 | 0.000 ** |
| Brown–Forsythe | 1654.441 | 1 | 175.990 | 0.000 ** | |
| Crop health | Welch | 215.190 | 1 | 113.940 | 0.000 ** |
| Brown–Forsythe | 215.190 | 1 | 113.940 | 0.000 ** | |
| Alive bugs | Welch | 2.889 | 1 | 190.884 | 0.091 |
| Brown–Forsythe | 2.889 | 1 | 190.884 | 0.091 | |
| Pesticide consumption | Welch | 10.190 | 1 | 197.375 | 0.002 * |
| Brown–Forsythe | 10.190 | 1 | 197.375 | 0.002 * |
Asymptotically F distributed; * statistically significant with a significance level of 0.01; ** statistically significant with a significance level of 0.001.
Effect sizes between neighbor and low-cost neighbor strategies.
| Power (kW) | Crop Health (%) | Alive Bugs (%) | Pesticide (mL) | |
|---|---|---|---|---|
| Mean difference | −21.18 | −0.54 | 2.30 | 11.63 |
| Cohen’s d | −5.75 | −2.07 | 0.24 | 0.45 |
Figure 6Simulation evolutions of the average power per active station.
Figure 7Simulation evolutions of the crop health.
Figure 8Simulation evolutions of the percentage of alive bugs.
Figure 9Simulation evolutions of average pesticide consumption per station.