Pezo Lato, Lončar Biljana, Šovljanski Olja, Tomić Ana, Travičić Vanja, Pezo Milada, Aćimović Milica
Institute of General and Physical Chemistry, University of Belgrade, Studentski trg 12, 11000 Belgrade, Serbia.
Faculty of Technology Novi Sad, University of Novi Sad, Bulevar cara Lazara 1, 21000 Novi Sad, Serbia.
Life (Basel). 2022 Oct 27;12(11):1722. doi: 10.3390/life12111722.
Predicting yield is essential for producers, stakeholders and international interchange demand. The majority of the divergence in yield and essential oil content is associated with environmental aspects, including weather conditions, soil variety and cultivation techniques. Therefore, aniseed production was examined in this study. The categorical input variables for artificial neural network modelling were growing year (two successive growing years), growing locality (three different locations in Vojvodina Province, Serbia) and fertilization type (six different treatments). The output variables were morphological and quality parameters, with agricultural importance such as plant height, umbel diameter, number of umbels, number of seeds per umbel, 1000-seed weight, seed yield per plant, plant weight, harvest index, yield per ha, essential oil (EO) yield, germination energy, total germination, EO content, as well as the share of EOs compounds, including limonene, -dihydro carvone, methyl chavicol, carvone, -anethole, -anethole, β-elemene, α-himachalene, -β-farnesene, γ-himachalene, -muurola-4(14),5-diene, α-zingiberene, β-himachalene, β-bisabolene, -pseudoisoeugenyl 2-methylbutyrate and epoxy-pseudoisoeugenyl 2-methylbutyrate. The ANN model predicted agricultural parameters accurately, showing r values between 0.555 and 0.918, while r values for the forecasting of essential oil content were between 0.379 and 0.908. According to global sensitivity analysis, the fertilization type was a more influential variable to agricultural parameters, while the location site was more influential to essential oils content.
预测产量对生产者、利益相关者和国际交换需求至关重要。产量和精油含量的大部分差异与环境因素有关,包括天气条件、土壤种类和种植技术。因此,本研究对茴芹籽生产进行了考察。人工神经网络建模的分类输入变量为种植年份(连续两个种植年份)、种植地点(塞尔维亚伏伊伏丁那省的三个不同地点)和施肥类型(六种不同处理)。输出变量为形态和品质参数,具有农业重要性,如株高、伞形花序直径、伞形花序数量、每个伞形花序的种子数量、千粒重、单株种子产量、植株重量、收获指数、每公顷产量、精油产量、发芽势、总发芽率、精油含量,以及精油化合物的占比,包括柠檬烯、二氢香芹酮、甲基黄樟素、香芹酮、反式茴香脑、顺式茴香脑、β-榄香烯、α-雪松烯、β-法尼烯、γ-雪松烯、穆罗勒烯-4(14),5-二烯、α-姜烯、β-雪松烯、β-没药烯、假异丁香酚2-甲基丁酸酯和环氧假异丁香酚2-甲基丁酸酯。人工神经网络模型准确地预测了农业参数,r值在0.555至0.918之间,而预测精油含量的r值在0.379至0.908之间。根据全局敏感性分析,施肥类型对农业参数的影响更大,而种植地点对精油含量的影响更大。