Low temperature chilling damage is one of the most serious disasters in maize production, which is a typical non-linear complex issue with numerous influencing factors and strong uncertainty. How to predict it is not only a hot theoretical research topic, but also an urgent practical problem to be solved. However, most of the current researches are focusing on post-disaster static descriptive assessment rather than pre-disaster dynamic predictive analysis, resulting in the problems such as no indicative result and low accuracy. In this study, the satisfaction rate of environmental accumulated temperature for maize production was used to measure the chilling damage risk, and a model for maize chilling damage risk prediction based on probabilistic neural network was constructed. The model was composed of input layer, pattern layer, summation layer and output layer. The obtained results showed that the prediction accuracy for the most serious risk level was as high as 0.91, and the rates of the Type I Error and Type II Error made by the model were 0.1 and 0.09, respectively. This indicated that the model employed was promising with good performance. The results of this research is are of both theoretical significance for providing a new reference method of pre-disaster prediction to study maize chilling disaster risk and practical significance for reducing maize production risk and ensuring yield safety.
Keywords: maize chilling damage, risk prediction, probabilistic neural network
DOI: 10.25165/j.ijabe.20211402.5732
Citation: Mi C Q, Zhao C H, Deng Q Y, Deng X W. Prediction of chilling damage risk in maize growth period based on probabilistic neural network approach. Int J Agric & Biol Eng, 2021; 14(2): 120–125.
[1]
C. Shilaja,et al.
Energy demand classification by probabilistic neural network for medical diagnosis applications
,
2019,
Neural Computing and Applications.
[2]
MA Shu-qin.
Risk evaluation of cold damage to corn in Northeast China
,
2003
.
[3]
A. Gandomi,et al.
Probabilistic neural networks
,
2020,
Handbook of Probabilistic Models.
[4]
Wang Chuny,et al.
Prospects and progresses in the research of risk assessment of agro-meteorological disasters
,
2015
.
[5]
Meng Wang,et al.
Single and multi-factor analysis on screw-holding power of corn straw fiber brick
,
2018,
Construction and Building Materials.
[6]
Hua Li,et al.
New Fault Recognition Method for Rotary Machinery Based on Information Entropy and a Probabilistic Neural Network
,
2018,
Sensors.
[7]
Mohammed Alweshah,et al.
Water Evaporation Algorithm with Probabilistic Neural Network for Solving Classification Problems
,
2019
.
[8]
S. Ma,et al.
[Dynamic prediction and evaluation method of maize chilling damage].
,
2006,
Ying yong sheng tai xue bao = The journal of applied ecology.