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辊式黄鳝振动分级装置设计与仿真试验分析

Design and Simulation Test Analysis of Roller-Type Eel Vibratory Grading Device

  • 摘要: 为满足黄鳝养殖与加工过程中对不同体型个体进行高效、精准分级的需求,该研究利用振动与喷淋装置协同作用对黄鳝进行分级处理,设计了一种振动式黄鳝分级机。基于Recurdyn-EDEM联合仿真技术建立分级机与黄鳝的耦合仿真模型,以分级效率、分级准确率作为评价指标开展仿真研究,并通过试验验证仿真结果的准确性;基于耦合仿真模型,进行单因素及多因素正交试验分析。研究结果表明,影响分级准确率和效率的因素主次顺序为分级筛倾角、进鱼量和振动频率。黄鳝数量增加,分级效率先增加后减小,分级准确率降低;分级筛倾角增加,分级效率增加,分级准确率降低;振动频率增加,分级效率增加,分级准确率先增加后减小。通过正交试验得到最优参数组合为:振动频率30Hz,分级筛倾角2.6°,进鱼量数量27条。在该参数条件下,实测分级效率为0.637条/s,平均分级准确率为86.7%,与仿真结果的误差分别为7.97%和3.58%。研究结果可为黄鳝分级设备的优化设计提供重要参考。

     

    Abstract: Efficient and accurate grading of Monopterus albus (rice field eel) with different body sizes is a key requirement for automated aquaculture production and standardized processing. To meet the demand for high-throughput and high-precision size classification, a vibration-type rice field eel grading machine integrating a vibration mechanism and a spraying device was designed. The objective of this study was to evaluate the grading performance of the proposed equipment and to optimize its operating parameters through numerical simulation and experimental validation.A coupled dynamic simulation model of the grading machine and rice field eel was established using RecurDyn–EDEM co-simulation technology. The rigid–flexible multibody dynamics of the grading system, including the vibration exciter, grading sieve, and supporting structure, were modeled in RecurDyn, while the discrete element method implemented in EDEM was used to characterize the motion, collision behavior, and contact interactions of individual rice field eels. Appropriate contact models and mechanical parameters were defined to realistically describe eel–eel and eel–machine interactions, and a spraying-assisted lubrication effect was considered to improve material dispersion and reduce excessive friction during grading. Grading efficiency and grading accuracy were selected as the primary performance indices to quantitatively assess the grading process. Based on the coupled simulation framework, single-factor simulations were first conducted to analyze the independent effects of vibration frequency, grading sieve inclination angle, and feeding quantity on grading performance. The results of the single-factor experiments showed that with an increase in the number of rice field eels, the grading efficiency first increased and then decreased, while the grading accuracy gradually decreased. As the inclination angle of the grading sieve increased, the grading efficiency increased, whereas the grading accuracy decreased. With increasing vibration frequency, the grading efficiency increased continuously, while the grading accuracy first increased and then decreased. Subsequently, a multi-factor orthogonal experimental design was applied to identify the relative importance of each parameter and their combined influence on grading efficiency and accuracy. The simulation results were further verified through physical experiments using a prototype grading machine under corresponding operating conditions, allowing for direct comparison between numerical predictions and measured data. The results showed that the grading sieve inclination angle exerted the greatest influence on both grading accuracy and efficiency, followed by feeding quantity and vibration frequency. Improper parameter combinations resulted in reduced grading performance due to insufficient dispersion, material accumulation, or excessive sliding velocity on the sieve surface. To further improve grading performance, parameter optimization was performed using Design-Expert software, with grading efficiency and grading accuracy as the optimization objectives. The optimal parameter combination was determined as a vibration frequency of 30 Hz, a grading sieve inclination angle of 2.6°, and a feeding quantity of 27 individuals. Under these conditions, the experimentally measured grading efficiency reached 0.637 individuals per second, and the average grading accuracy was 86.7%. The relative errors between experimental and simulation results were 7.97% for grading efficiency and 3.58% for grading accuracy, indicating good consistency and predictive capability of the coupled simulation model. The findings demonstrate that RecurDyn–EDEM coupled simulation is an effective tool for analyzing the complex interaction between vibration-driven machinery and elongated aquatic organisms. The optimized grading parameters and validated simulation methodology provide a reliable basis for the structural improvement and performance enhancement of vibration-based rice field eel grading equipment. This research offers practical technical support for the development of intelligent, efficient, and scalable grading systems for aquatic products with similar morphological characteristics.

     

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