شماره ركورد
981553
عنوان مقاله
كاربرد الگوريتمهاي دادهكاوي در تفكيك منابع رسوبي حوزه آبخيز نوده گناباد
عنوان فرعي
Using Data Mining Algorithms in Separation of Sediment Sources in Nodeh Watershed, Gonabad
پديد آورنده
بشيري مهدي
پديد آورندگان
آرياپور مهسا نويسنده دانشگاه تربت حيدريه - دانشكده كشاورزي و منابع طبيعي , گلكاريان علي نويسنده دانشگاه فردوسي مشهد - دانشكده منابع طبيعي و محيط زيست - گروه مرتع و آبخيزداري
سازمان
دانشگاه تربت حيدريه - دانشكده كشاورزي و منابع طبيعي - گروه مرتع و آبخيزداري
تعداد صفحه
15
از صفحه
81
تا صفحه
95
كليدواژه
حوضه نوده , غلظت عناصر , منشايابي , الگوريتمهاي طبقهبندي
چكيده فارسي
لازمه اجراي برنامههاي كنترل رسوب، شناسايي اهميت نسبي منابع رسوب، ميزان مشاركت آنها و در نتيجه شناسايي مناطق بحراني آبخيزهاست. در اين پژوهش از الگوريتمهاي دادهكاوي براي تفكيك منابع رسوبي حوضه نوده گناباد در استان خراسان رضوي با كمك متغيرهاي ژيوشيميايي، دانهبندي و سنگشناسي استفاده شد. يازده الگوريتم براي طبقهبندي در نرمافزار MATLAB برنامهنويسي و نتايج براساس ضريب تبيين و ميانگين مربع خطا با يكديگر مقايسه شد. بررسي غلظت عناصر ژيوشيميايي در هفت واحد زمينشناسي حوضه نشان داد كه عناصر Ca، Fe، Mg وAL داراي بيشترين و عناصر B و Co داراي كمترين غلظت در نمونههاي خاك است. ارزيابي كلي الگوريتمهاي طبقهبندي در مرحله آموزش نشان داد كه الگوريتمهاي تحليل مميزي، جنگل تصادفي، k نزديكترين همسايه و ماشينهاي بردارپشتيبان با توابع خطي، چندجملهاي، چندگانه و شعاع مبنا با حداكثر مقدار ضريب تبيين (1=R2) و حداقل مقدار ميانگين مربع خطا (0=MSE)، دقيقترين الگوريتمها در تفكيك منابع رسوبي هستند و روش درخت رگرسيوني ضعيفترين عملكرد را دارد. در مرحله آزمون نيز ماشينهاي بردارپشتيبان با تابع شعاع مبنا، دقيقترين الگوريتم و درخت طبقهبندي با بالاترين خطا، ناكارآمدترين الگوريتم بود. همچنين ورود متغيرهاي ژيوشيميايي منجر به بالاترين دقت در تفكيك منابع رسوبي شد و متغيرهاي دانهبندي كمترين دقت تفكيك را باعث شد.
چكيده لاتين
Introduction: Reduction of sediment supply requires the implementation of soil conservation and sediment control programs in the form of watershed management plans. Sediment control programs require identifying the relative importance of sediment sources, their quantitative ascription and identification of critical areas within the watersheds. The sediment source ascription is involves two main steps so that in the first, several diagnostic tracers are selected for obvious and significant separation of potential sources of sediment and in the second step selected tracers for potential sources of sediment are compared, with corresponding values extracted from the sediment samples taken in the watershed outlet. Also, due to the large amount and complexity of data available, nowadays in geo- and environmental sciences, we face the need to develop and incorporate more robust and efficient methods for their analysis and modelling. Therefore recent fundamental progress in data mining algorithms can considerably contribute to the development of the emerging field - environmental data science.
Methodology: According to what was said, in this research, the data mining algorithms used to separate sediment sources in the Nodeh watershed of Gonabad located in Razavi-Khorasan province by using the geochemical (includes the 21 elements of Mg, Sr, Mn, Ba, Zn, Y, V, Ti, Pb, P, Na, Li, K, Cu, Cr, Co, Ce, B, Ca, Al and Fe), granulometric (includes the D90, D50, D10, percent of sand, percent of silt, percent of clay, skewness and kurtosis and the diameters less than 1, 2 and 4 millimeters and less than 500, 250, 125 and 63 microns) and lithological variables (includes the quartz, tuff, laterite, dacite, andesite, dolomite, calcite, andesitic tuff, lithic andesite and salt). A set of 11 classification algorithms includes the decision tree, random forest, regression methods, discriminant analysis, local linear model tree, nearest neighbor analysis, support vector machine, logistic regression, artificial neural network, pattern recognition and group method of data handling programmed in the MATLAB software and the results compared based on the coefficient of determination and mean squared error.
Results and Discussion: Study of geochemical element concentrations in 7 geological units showed that the Ca, Fe, Mg and Al elements have the highest and B and Co have the lowest concentrations within the soil samples. Overall evaluation of classification algorithms in training stage showed that the discriminant analysis, random forest, k nearest neighbor and support vector machines with linear, polynomial, multiple and RBF kernels with maximum values of the coefficient of determination (R2=1) and minimum values of the mean squared error (RMSE=0) are the most accurate algorithms in sediment source separation but the regression trees method has the worst performance. Also, at testing stage, the support vector machines with RBF kernel was the most accurate and the classification trees with maximum error rate was the most inaccurate algorithm. Also, entrance of geochemical and granulometric variables lead to the highest and lowest accuracy in the sediment source separation, respectively. Using the geochemical variables for the separation of sediment sources, types of support vector machines, nearest neighbor analysis, discriminant analysis and the random forest algorithm had the highest coefficients of determination and lowest error values in the training and testing stages. By entering the lithological variables, the random forest algorithm had the highest accuracy for the sediment sources classification in the training and testing stages and the discriminant analysis and support vector machines were located thereafter. Finally, fitting the classification algorithms using granulometric variables showed that the support vector machines had highest accuracy in the training and testing stages of models and the random forest and nearest neighbor analysis were ranked thereafter.
Conclusion: Totally, due to the proper accuracy and performance of data mining classifier algorithms, application of these methods in the natural sciences is suggested especially in the large amounts of data. These algorithms are used to find patterns in large sets of data and help classify new information. Especially, the support vector machines that are supervised classifier algorithms and besides that, in the natural sciences have successful results. In the watershed management considering the time and cost, sediment source ascriptions are difficult to obtain using monitoring techniques, but data mining procedures, have emerged as a potentially valuable alternative. Therefore, application and evaluation of these methods are suggested for further studies and natural sciences data.
سال انتشار
1397
عنوان نشريه
مهندسي اكوسيستم بيابان
عنوان نشريه
مهندسي اكوسيستم بيابان
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