Zhao Yanru, Wang Dongsheng, Huang Xiaojie
The College of Mechanical and Power Engineering, Henan Polytechnic University, Jiaozuo 454003, China.
Micromachines (Basel). 2023 Jun 8;14(6):1215. doi: 10.3390/mi14061215.
In order to improve the precision of gas detection and develop valid search strategies, the improved quantitative identification algorithm in odor source searching was researched based on the gas sensor array. The gas sensor array was devised corresponding to the artificial olfactory system, and the one-to-one response mode to the measured gas was set up with its inherent cross-sensitive properties. The quantitative identification algorithms were researched, and the improved Back Propagation algorithm was proposed combining cuckoo algorithm and simulated annealing algorithm. The test results prove that using the improved algorithm to obtain the optimal solution -1 at the 424th iteration of the Schaffer function with 0% error. The gas detection system designed with MATLAB was used to obtain the detected gas concentration information, then the concentration change curve may be achieved. The results show that the gas sensor array can detect the concentration of alcohol and methane in the corresponding concentration detection range and show a good detection performance. The test plan was designed, and the test platform in a simulated environment in the laboratory was found. The concentration prediction of experimental data selected randomly was made by the neural network, and the evaluation indices were defined. The search algorithm and strategy were developed, and the experimental verification was carried out. It is testified that the zigzag searching stage with an initial angle of 45° is with fewer steps, faster searching speed, and a more exact position to discover the highest concentration point.
为提高气体检测精度并制定有效的搜索策略,基于气体传感器阵列对气味源搜索中的改进定量识别算法进行了研究。对应人工嗅觉系统设计了气体传感器阵列,并利用其固有的交叉敏感特性建立了对被测气体的一对一响应模式。研究了定量识别算法,提出了结合布谷鸟算法和模拟退火算法的改进反向传播算法。测试结果表明,使用改进算法在Schaffer函数的第424次迭代时获得最优解-1,误差为0%。利用MATLAB设计的气体检测系统获取检测到的气体浓度信息,进而得到浓度变化曲线。结果表明,气体传感器阵列能够在相应浓度检测范围内检测酒精和甲烷的浓度,并表现出良好的检测性能。设计了测试方案,搭建了实验室模拟环境下的测试平台。利用神经网络对随机选取的实验数据进行浓度预测,并定义了评价指标。开发了搜索算法和策略,并进行了实验验证。结果表明,初始角度为45°的锯齿形搜索阶段步数较少、搜索速度较快,且能更准确地找到最高浓度点的位置。