Sun Hailong, Huang Xiao, Chen Tao, Zhou Pengyu, Huang Xuexi, Jin Weixin, Liu Dan, Zhang Hongtu, Zhou Jianguo, Wang Zhongjun, Hayat Faisal, Gao Zhihong
Research Institute of Pomology Chinese Academy of Agricultural Sciences Key Laboratory of Biology and Genetic Improvement of Horticultural Crops Germplasm Resources Utilization Ministry of Agriculture Xingcheng China.
College of Horticulture Nanjing Agricultural University Nanjing China.
Food Sci Nutr. 2022 Feb 28;10(6):1756-1767. doi: 10.1002/fsn3.2794. eCollection 2022 Jun.
Mineral nutrition of orchard soil is critical for the growth of fruit trees and improvement of fruit quality. In the present study, the effects of soil mineral nutrients on peach fruit quality were studied by using artificial neural network model. The results showed that the four established ANN models had the highest prediction accuracy ( = .9735, .9607, .9036, and .9440, respectively). The results of prediction model sensitivity analysis showed that available B, Ca, N, and K in the soil had the greatest influence on the single fruit weight, available Fe, K, B, and Ca in the soil had the greatest effect on fruit soluble solid content, available Ca, N, B, and K in the soil had the greatest influence on the fruit titratable acid content, and available Ca, Fe, N, and Mn in the soil had the greatest effect on fruit edible rate. The response surface methodology analysis determined the optimal range of these mineral elements, which is critical for guiding precision fertilization in peach orchards and improving peach fruit quality.
果园土壤的矿质营养对于果树生长和果实品质提升至关重要。在本研究中,利用人工神经网络模型研究了土壤矿质养分对桃果实品质的影响。结果表明,所建立的4个人工神经网络模型具有最高的预测精度(分别为=0.9735、0.9607、0.9036和0.9440)。预测模型敏感性分析结果表明,土壤中有效硼、钙、氮和钾对单果重影响最大,土壤中有效铁、钾、硼和钙对果实可溶性固形物含量影响最大,土壤中有效钙、氮、硼和钾对果实可滴定酸含量影响最大,土壤中有效钙、铁、氮和锰对果实可食率影响最大。响应面法分析确定了这些矿质元素的最佳范围,这对于指导桃园精准施肥和提高桃果实品质至关重要。