Abstract

The paper considers the issue of supplying autonomous robots by solar batteries. Low efficiency of modern solar batteries is a critical issue for the whole industry of renewable energy. The urgency of solving the problem of improved energy efficiency of solar batteries for supplying the robotic system is linked with the task of maximizing autonomous operation time. Several methods to improve the energy efficiency of solar batteries exist. The use of MPPT charge controller is one these methods. MPPT technology allows increasing the power generated by the solar battery by 15 – 30%. The most common MPPT algorithm is the perturbation and observation algorithm. This algorithm has several disadvantages, such as power fluctuation and the fixed time of the maximum power point tracking. These problems can be solved by using a sufficiently accurate predictive and adaptive algorithm. In order to improve the efficiency of solar batteries, autonomous power supply system was developed, which included an intelligent MPPT charge controller with the fuzzy logic-based perturbation and observation algorithm. To study the implementation of the fuzzy logic apparatus in the MPPT algorithm, in Matlab/Simulink environment, we developed a simulation model of the system, including solar battery, MPPT controller, accumulator and load. Results of the simulation modeling established that the use of MPPT technology had increased energy production by 23%; introduction of the fuzzy logic algorithm to MPPT controller had greatly increased the speed of the maximum power point tracking and neutralized the voltage fluctuations, which in turn reduced the power underproduction by 2%.

Highlights

  • One of the main problems for autonomous robotics industry is power supply of robots

  • The described work resulted in development of a solar-based power supply system of autonomous robots

  • Effectiveness of the developed system is improved by the use of the matecconf/201815501032Maximum Power Point Tracking (MPPT) charge controller with a fuzzy logic-based adaptive algorithm

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Summary

Introduction

One of the main problems for autonomous robotics industry is power supply of robots. One of the possible solution is supplying robots with solar batteries. Maximum Power Point Tracking (MPPT) is one of the ways to improve the energy efficiency of photovoltaic modules and wind-energetic turbines by obtaining the maximally possible power on output of these systems. The disadvantages of the perturbation and observation algorithm are the power fluctuations and fixed time of "climbing" (the maximum power point tracking) [1]. Decrease of the power of fluctuation amplitude leads to the increase of time of the maximum power point tracking These problems can be solved by using a sufficiently accurate predictive and adaptive algorithm [2, 3]. The urgency of solving the problem of improved energy efficiency of solar batteries for supplying the robotic system is linked with the task of maximizing autonomous operation time.

Development of the autonomous power supply system
Simulation modeling of the system
Study of the influence of the fuzzy logic unit on the MPPT controller
Findings
Conclusion
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