مدل های شبیه سازی گندم، تنوع آب و هوا دههای؛ آنالیز موجک؛ اطلس چند دهه نوسان. اقیانوس آرام دههای نوسان. نوسان اطلس شمالی
مدل های شبیه سازی گندم، تنوع آب و هوا دههای؛ آنالیز موجک؛ اطلس چند دهه نوسان. اقیانوس آرام دههای نوسان. نوسان اطلس شمالی
نویسندگان |
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اطلاعات مجله |
مدل های شبیه سازی گندم، تنوع آب و هوا دههای؛ آنالیز موجک؛ اطلس چند دهه نوسان. اقیانوس آرام دههای نوسان. نوسان اطلس شمالی |
سال انتشار |
2015 |
فرمت فایل |
PDF |
کد مقاله |
21817 |
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چکیده (انگلیسی):
The development of methodologies for predicting crop yield, in real-time and in response to different agro-climatic conditions, could help to improve the farm management decision process by providing an analysis of expected yields in relation to the costs of investment in particular practices. Based on the use of crop models, this paper compares the ability of two methodologies to predict wheat yield (Triticum aestivum L.), one based on stochastically generated climatic data and the other on mean climate data. It was shown that the numerical experimental yield distribution could be considered as a log-normal distribution. This function is representative of the overall model behaviour. The lack of statistical differences between the numerical realisations and the logistic curve showed in turn that the Generalised Central Limit Theorem (GCLT) was applicable to our case study. In addition, the predictions obtained using both climatic inputs were found to be similar at the inter and intra-annual time-steps, with the root mean square and normalised deviation values below an acceptable level of 10% in 90% of the climatic situations. The predictive observed lead-times were also similar for both approaches. Given (i) the mathematical formulation of crop models, (ii) the applicability of the CLT and GLTC to the climatic inputs and model outputs, respectively, and (iii) the equivalence of the predictive abilities, it could be concluded that the two methodologies were equally valid in terms of yield prediction. These observations indicated that the Convergence in Law Theorem was applicable in this case study. For purely predictive purposes, the findings favoured an algorithm based on a mean climate approach, which needed far less time (by 300-fold) to run and converge on same predictive lead time than the stochastic approach.
کلمات کلیدی مقاله (فارسی):
مدل محصول عود خوش بو کننده؛ تنوع آب و هوا؛ LARS-WG؛ عملکرد پیش بینی؛ لگ نرمال توزیع؛ همگرایی در قضیه قانون؛ تئوری حد مرکزی
کلمات کلیدی مقاله (انگلیسی):
STICS crop model; Climate variability; LARS-WG; Yield prediction; Log-normal distribution; Convergence in Law Theorem; Central Limit Theorem
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