基于八种预测模型的刺尾杉叶虫幼虫高峰出现预测结果比较

IF 1.2 4区 农林科学 Q3 ENTOMOLOGY Entomological Research Pub Date : 2024-02-04 DOI:10.1111/1748-5967.12707
Xian Cheng, Honghao Cheng, Shiyan Chen, Xiazhi Zhou, Guoqing Wang, Guoqing Zhang, Guofei Fang, Yunding Zou, Shoudong Bi
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摘要

为了明确8个预测模型对点叶桉第一代幼虫发生峰值的预测精度,为病虫害防治提供依据,根据安徽省潜山市1983-2016年点叶桉第一代幼虫发生峰值,建立了灾害预测模型,并与其他7个预测模型进行了比较。将 2015 年和 2016 年的预测结果与实际值进行比较,以 1 头/株为误差标准,以越冬代蛹发生高峰、第一代卵发生高峰、越冬代累计种群数量、越冬代成虫发生高峰、4 月上旬降雨量和刺梢蝽第一代卵中三代寄生率 6 个因子为自变量的多元回归模型的误差分别为 0.21 头/株和 0.23 头/株,准确率为 100%。用同样的六个因子建立的逐步回归模型的误差分别为 0.23 头/株和 0.29 头/株。人工 BP 神经网络模型、马尔科夫链模型、或然率表模型、静态时间序列模型和模糊综合评价模型的预测准确率均为 100%,但方差期外推模型的准确率为 88%。巨灾预测模型的准确率与巨灾阈值的选择有关。综合比较以上八种模型,多元回归、逐步回归、人工 BP 神经网络、马尔可夫链模型、静态时间序列模型和巨灾预测模型的准确率较高。
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Comparison of prediction results of Dendrolimus punctatus larvae peak occurrence based on eight prediction models

In order to clarify the prediction accuracy of eight models for predicting the peak occurrence of the first generation larvae of Dendrolimus punctatus and provide basis for the pest control, a catastrophe prediction model was established based on the peak occurrence of the first generation larvae of Dendrolimus punctatus in Qianshan City, Anhui Province from 1983 to 2016, and compared with other seven prediction models. Comparing the forecasting results in 2015 and 2016 with actual value and taking 1 head/plant as the error standard, the errors of multiple regression models with six factors as independent variables, namely, peak occurrence of pupae in overwintering generation, peak occurrence of eggs in the first generation, cumulative population in overwintering generation, peak occurrence of adults in overwintering generation, rainfall in early April and parasitic rate of Trichogrammatid in the first generation eggs of Dendrolimus punctatus, were 0.21 heads/plant and 0.23 heads/plant with accuracy rate of 100%. The errors of stepwise regression model with the same six factors were 0.23 head/plant and 0.29 head/plant. The prediction accuracy of artificial BP neural network model, Markov chain model, contingency table model, stationary time series model, and fuzzy comprehensive evaluation model was 100%, but variance period extrapolation model had an accuracy rate of 88%. The accuracy of catastrophe prediction model was related to the selection of catastrophe threshold. Comprehensive comparison of the above eight models, multiple regression, stepwise regression, artificial BP neural network, Markov chain model, stationary time series model, and catastrophe prediction model were more accurate.

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来源期刊
CiteScore
2.50
自引率
7.70%
发文量
64
期刊介绍: Entomological Research is the successor of the Korean Journal of Entomology. Published by the Entomological Society of Korea (ESK) since 1970, it is the official English language journal of ESK, and publishes original research articles dealing with any aspect of entomology. Papers in any of the following fields will be considered: -systematics- ecology- physiology- biochemistry- pest control- embryology- genetics- cell and molecular biology- medical entomology- apiculture and sericulture. The Journal publishes research papers and invited reviews.
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