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首页> 外文期刊>Journal of Computational Methods in Sciences and Engineering >Advanced design and tests of a new electrical control seeding system with genetic algorithm fuzzy control strategy
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Advanced design and tests of a new electrical control seeding system with genetic algorithm fuzzy control strategy

机译:具有遗传算法模糊控制策略的新型电气控制播种系统的先进设计与测试

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In the existing soybean breeding and planting machinery, the power source of the metering device adopts the ground wheel transmission method mostly. However, this power transmission method is likely to cause slippage during the planting operation, which will cause problems such as the increase of the missed seeding index and the increase of the coefficient of plant spacing. It is not conducive for scientific researchers to carry out breeding operations. Aiming at this problem, an electronically controlled soybean seeding system is designed, and the power of the seed metering device is derived from the motor. In order to improve the control accuracy of the electronically controlled seeding system, the precise control of the soybean seeding rate is finally realized. The electric drive soybean seeding system adopts closed-loop control, the motor model of the electric drive seeding system is established, and the transfer function of the motor is obtained. PID control based on a genetic algorithm is adopted, and the corresponding parameters are substituted into the control system simulation model established in MATLAB/SIMULINK. Field verification tests have been carried out on the conventional fuzzy PID control system and the electric drive soybean planter of the fuzzy PID control system based on a genetic algorithm. The result showed that the average of the repeat-seeding parameter is 1.30% better than the average of conventional seeding system (1.40%), the average of the miss-seeding parameter is 1.08% better than the average of conventional seeding system (2.09%) and the average of row-spacing variation parameter is 2.79% better than the average of conventional seeding system (2.34%). In conclusion, the new seeding system is robust obviously. Field trial results show that seeding with Genetic Algorithm Fuzzy control is better.
机译:在现有的大豆养殖和种植机械中,计量装置的电源主要采用地面轮传动方法。然而,这种动力传递方法可能在种植操作期间引起滑动,这将导致错过的播种指数的增加和植物间距系数的增加。它不利于科学研究人员进行育种业务。针对这个问题,设计了一种电子控制的大豆播种系统,并且种子计量装置的功率来自电动机。为了提高电子控制播种系统的控制精度,最终实现了大豆播种率的精确控制。电动驱动大豆播种系统采用闭环控制,建立电动驱动播种系统的电动机模型,获得电动机的传递函数。采用基于遗传算法的PID控制,相应的参数被代入MATLAB / Simulink中建立的控制系统仿真模型。基于遗传算法的传统模糊PID控制系统和模糊PID控制系统的电动驱动大豆种植园,已经进行了现场验证测试。结果表明,重复播种参数的平均值优于常规播种系统的平均值(1.40%),比常规播种系统的平均值优于0.8%(2.09%)的小播种参数的平均值为1.08%(2.09%) “行间距变化参数的平均值比常规播种系统的平均值更高2.79%(2.34%)。总之,新的播种系统明显是强劲的。现场试验结果表明,播种遗传算法模糊控制更好。

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