مقایسه ی توانایی روش های رقومی در پیش بینی کلاس های خاک بر مبنای سامانه های رده بندی آمریکایی و جهانی (مطالعه ی موردی: دشت شهرکرد، استان چهارمحال و بختیاری)

نوع مقاله : مقالات پژوهشی

نویسندگان

1 دانشگاه شهرکرد

2 دانشگاه شهید باهنر کرمان

3 دانشگاه ولیعصر رفسنجان

چکیده

به منظور بررسی تأثیر سامانه های رده بندی و روش های رقومی مختلف بر صحت نتایج پیش بینی کلاس های خاک در دشت شهرکرد استان چهارمحال و بختیاری، 120 خاک رخ با فواصل تقریبی 750 متر حفر، تشریح و از تمامی افق های ژنتیکی آن ها نمونه برداری صورت گرفت. بر اساس اطلاعات حاصل از مشاهدات صحرایی و نتایج آزمایشگاهی، رده بندی خاک رخ ها بر مبنای سامانه های رده بندی آمریکایی (تا سطح فامیل) و جهانی (تا سطح واحد) نهایی گردید. پیش بینی کلاس های خاک در هر سطح بر مبنای دو سامانه ی رده بندی و با استفاده از مدل های شبکه ی عصبی- مصنوعی، درختان تصمیم گیری تصادفی، رگرسیون درختی توسعه یافته و رگرسیون لاجیستیک چند جمله ای انجام شد. نتایج نشان داد که سامانه ی آمریکایی برای رده بندی خاک ها و ایجاد نقشه های رقومی کلاس های خاک از کارایی بالاتری نسبت به سامانه ی جهانی برخوردار است. در تمامی مدل ها و بر مبنای دو سامانه ی رده بندی، مقدار صحت عمومی از سطوح بالای رده بندی به سمت سطوح پایین تر کاهش یافت؛ ولی صحت مدل-های مختلف برای پیش بینی کلاس های خاک در هر یک از سطوح رده بندی آمریکایی تقریبا یکسان بود. در رابطه با سامانه ی جهانی در سطح گروه مرجع، مدل رگرسیون لاجیستیک چندجمله ای کارایی بالاتری داشت. در بین پارامترهای محیطی وارد شده به مدل های مختلف در سطوح مختلف دو سامانه ی رده بندی، اجزای سرزمین مهم ترین پارامترها در پیش بینی کلاس های خاک بودند. سطح و سامانه ی رده بندی مورد نظر، میزان تنوع و مساحت (فراوانی) هر یک از خاک ها، توزیع مکانی خاک ها، تراکم نمونه برداری و نوع پارامترهای محیطی مورد استفاده از مهم ترین عواملی می باشند که می توانند صحت پیش بینی کلاس های خاک را تحت تأثیر قرار دهند.

کلیدواژه‌ها


عنوان مقاله [English]

Comparison of Capability of Digitizing Methods to Predict Soil classification According to the Soil Taxonomy and World Reference Base for Soil Resources

نویسندگان [English]

  • zohreh mosleh 1
  • mohammad hassan salehi 1
  • azam jafari 2
  • Isa Esfandiarpoor Borujeni 3
1 University of Shahrekord
2 Shahid Bahonar University of Kerman
3 Vali-e-Asr University of Rafsanjan
چکیده [English]

Introduction: Soil classification generally aims to establish a taxonomy based on breaking the soil continuum into homogeneous groups that can highlight the essential differences in soil properties and functions between classes.The two most widely used modern soil classification schemes are Soil Taxonomy (ST) and World Reference Base for Soil Resources (WRB).With the development of computers and technology, digital and quantitative approaches have been developed. These new techniques that include the spatial prediction of soil properties or classes, relies on finding the relationships between soil and the auxiliary information that explain the soil forming factors or processes and finally predict soil patterns on the landscape. These approaches are commonly referred to as digital soil mapping (DSM) (14). A key component of any DSM mapping activity is the method used to define the relationship between soil observation and auxiliary information (4). Several types of machine learning approaches have been applied for digital soil mapping of soil classes, such as logistic and multinomial logistic regressions (10,12), random forests (15), neural networks (3,13) and classification trees (22,4). Many decisions about the soil use and management are based on the soil differences that cannot be captured by higher taxonomic levels (i.e., order, suborder and great group) (4). In low relief areas such as plains, it is expected that the soil forming factors are more homogenous and auxiliary information explaining soil forming factors may have low variation and cannot show the soil variability.
Materials and Methods: The study area is located in the Shahrekord plain of Chaharmahal-Va-Bakhtiari province. According tothe semi-detailed soil survey (16), 120 pedons with approximate distance of 750 m were excavated and described according to the “field book for describing and sampling soils” (19). Soil samples were taken from different genetic horizons, air dried and grounded. Soil physicochemical properties were determined. Based on the pedon description and soil analytical data, pedons were classified according to the ST (20) and WRB (11). Terrain attributes, remote sensing indices, geology, soil and geomorphology map were considered as auxiliary information. All of the auxiliary information were projected onto the same reference system (WGS 84 UTM 39N) and resampled to 50×50 m according to the suggested resolution for digital soil maps (14). Four modeling techniques (multinomial logistic regression (MLR), artificial neural networks (ANNs), boosted regression tree (BRT) and random forest (RF)) were used for each taxonomic level to identify the relationship between soil classes and auxiliary information in each classification system. The models were trained with 80 percent of the data (i.e., 96 pedons) and their validation was tested by remaining 20 percent of the dataset (i.e., 24 pedons) that split randomly. The accuracy of the predicted soil classes was determined by using overall accuracy and Brier score.For each classification system, the model with the highest OA and the lowest BS values were considered as the most accurate model for each taxonomic level.
Results and Discussion: The results confirmed that ST showedmore accessory soil properties compared to WRB. The ST described the cation-exchange activity, soil depth classes, temperature and moisture regime. The different models had the same ability for prediction of soil classes across all taxonomic levels based on ST. Among the studied models, MLR had the highest performance to predict soil classes based on WRB. For all the studied models and both classification system, OA values showed a decreasing trend with increasing the taxonomic levels. Predicted soil classes based on the ST had the higher accuracy. Different models selected different auxiliary information to predict soil classes. For most of the models and both classification systems, the terrain attributes were the most important auxiliary information at each taxonomic level.
Conclusion: Results demonstrated that although ST showed more accessory soil properties compared to WRB, the DSM approaches have not enough accuracy for prediction of the soil classes at lower taxonomic levels. More investigations are needed in this issue to make a firm conclusion whether DSM approaches are appropriate for prediction of soil classes at the levels that are important for soil management. Prediction accuracy of soil classes can be influenced by the target taxonomic level and classification system, soil spatial variability in the study area, soil diversity, sampling density and the type of auxiliary information.

کلیدواژه‌ها [English]

  • Overall accuracy
  • Pedon
  • Random forests
  • Soil classification systems
  • Terrain attributes
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