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   ارزیابی ‌روش‌های‌‌ محاسبات ‌نرم‌ در ‌برآورد‌ رسوب معلق ‌رودخانه (ایستگاه حسن‌آباد رودخانه‌ تیره)  
   
نویسنده مرادی نژاد امیر ,خسروبیگی سعید ,اکبری محمود ,حسینی احمد
منبع مدل سازي و مديريت آب و خاك - 1403 - دوره : 4 - شماره : 2 - صفحه:241 -260
چکیده    برآورد بار رسوب رودخانه‌ها از مسائل مهم و کاربردی در مطالعات و طراحی پروژه‌های مهندسی آب، مانند طراحی و توسعه‌ شبکه‌های آبیاری و زهکشی، آبگیری از رودخانه و غیره است. مدل‌های آماری و رگرسیونی از معمول‌ترین روش‌های تحلیل هستند که اغلب با توجه به حل خطی این پدیده‌ها، نتایجی همراه با خطا ارائه داده‌اند. مدل‌های هیدرولیکی به‌دلیل نیاز به داده‌های زیاد و گاهی در دسترس نبودن داده‌های مورد نیاز و دقیق نبودن داده‌ها به‌علت خطای انسانی برای شبیه‌سازی رسوبات، همیشه نمی‌توان به آن‌ها اعتماد کرد. امروزه سیستم هادی هوشمند فازی و عصبی با توجه به توانایی در حل پدیده‌های غیرخطی و پیچیده، کاربردهای فراوانی در مسائل مختلف مهندسی آب از جمله رسوب پیدا کرده‌اند. هدف از پژوهش حاضر نیز ارزیابی و مقایسه‌ چهار روش مدل‌های فازی-عصبی تطبیقی (anfis)، ماشین بردار پشتیبان (svm)، برنامه‌ریزی بیان ژن (gep) و روش گروهی کنترل داده‌‌ها gmdh در برآورد بار رسوب ایستگاه حسن‌آباد رودخانه‌ تیره‌ استان مرکزی است. بدین‌منظور به عملکرد چهار نوع مدل در شبیه‌سازی بار رسوبی رودخانه‌ها پرداخته، سپس نتایج چهار روش با یک‌دیگر و با نتایج منحنی سنجه مورد مقایسه قرار گرفت. نتایج بیان‌گر عملکرد قابل‌قبول مدل‌ها نسبت به منحنی سنجه است. هم‌چنین، نتایج برتری مدل (gmdh) با بیش‌ترین ضریب تبیین (r2) با مقدار 0.99 و کم‌ترین ریشه‌ میانگین مربعات خطا (rmse) بر حسب تن در روز با مقدار 0.0038 نشان داد. در این خصوص کارآیی مدل (gep) تا حدی بهتر از مدل‌های svm و anfis بود. در مرحله‌ بعد، از بهترین الگوی انتخابی مدل‌های anfis، svm و gep به‌عنوان ورودی مدل gmdh استفاده شد. نتایج بیان‌گر عملکرد قابل‌قبول مدل gmdh با بیش‌ترین ضریب تبیین (r2) برابر 0.99 و 0.98 و کم‌ترین ریشه‌ میانگین مربعات خطا به‌ترتیب برابر 0.0038 و 0.0045 تن در روز شد. نتایج به‌دست آمده نشان داد هر چهار روش داده‌کاوی بررسی شده به‌مراتب نتایج بهتری نسبت به منحنی سنجه‌ رسوب ارائه می‌کنند.
کلیدواژه بار معلق، برنامه‌ریزی بیان ژن، رسوب، شبکه‌ فازی-عصبی، ماشین بردار پشتیبان
آدرس سازمان تحقیقات، آموزش و ترویج کشاورزی, مرکز تحقیقات و آموزش کشاورزی و منابع طبیعی استان مرکزی, گروه تحقیقات حفاظت خاک و آبخیزداری, ایران, اداره کل منابع طبیعی استان مرکزی, بخش فنی و مهندسی, ایران, دانشگاه اراک, دانشکده کشاورزی و محیط زیست, گروه علوم و مهندسی آب, ایران, سازمان تحقیقات، آموزش و ترویج کشاورزی, پژوهشکده حفاظت خاک و آبخیزداری کشور, ایران
پست الکترونیکی sahosseini@yahoo.com
 
   assessing soft calculation methods in river suspended sediment estimation (hassan abad station of tirah river)  
   
Authors moradinejad amir ,khosrobeigi saeid ,akbari mamood ,hosseini seyed ahmad
Abstract    introduction rivers are always faced with erosion and sediment transport. sediment transport in rivers is one of the most complex topics in river engineering and is always the focus of experts and water engineers. this phenomenon is one of the important hydrodynamic processes that affect many hydraulic systems and water facilities and is considered one of the basic problems in the exploiting surface water resources globally. estimating the sediment load of rivers is one of the important and practical issues in the studies and design of water engineering projects, such as the design and development of irrigation and drainage networks, water extraction from rivers, etc. sediment concentration can be calculated by direct or indirect methods, which are usually expensive and time-consuming direct methods. various factors affect this phenomenon, which makes their analysis difficult. therefore, they cannot model the sedimentation phenomenon with acceptable accuracy. hydraulic models cannot always be trusted due to the need for a lot of data, unavailability of the required data, and the inaccuracy of the data due to human error for simulating sediments. nowadays, fuzzy and neural intelligent conductor systems, due to their ability to solve complex and nonlinear phenomena, have found many applications in various water engineering problems, including sedimentation. the purpose of this research is to evaluate and compare adaptive neural fuzzy models (anfis), support vector machine (svm), gene expression programming (gep), and group model of data handling (gmdh) in estimating the sediment load of tirah river, markazi province. materials and methods in this research, first, the long-term daily statistics of temperature, rainfall, average flow rate, and sediment concentration of hasan abad hydrometric and sediment measuring station located on the main branch of the tirah river were collected. then, the data sufficiency test for analysis, checking the correlation between parameters of river discharge, precipitation, temperature with sediment discharge, and determining the long-term average of suspended sediment in the studied stations were performed. in the next step, a suitable combination of input variables was selected. the design of the input parameter pattern can be based on the relationship between flow and sediment flow parameters, rainfall, temperature, flow, and sediment flow. of course, considering that the mentioned parameters have a historical course, therefore, the design of the input patterns of soft computing models should be done based on time delays (like what is discussed in the analysis and forecasting of time series). determining the most appropriate time delay of the input parameters in the modeling of discharge, sediment, temperature, and rainfall, then the appropriate design of the structure of the used soft calculation models was done. in the next step, the estimation of sediment discharge using an svm, gep, and anfis group method of gmdh data control and comparison of three data mining methods, and also with the sediment rating curve and observational data. about 70 % of the research data was used as training and between 20 to 30 % for validation and testing. results and discussion based on the statistical indicators of optimal model selection, the best performance of the svr model has been obtained for model number one. in this model, the r2 and rmse obtained from the model are 0.96 and 0.0047, respectively. besides, the r2 and the rmse error of the models in predicting suspended sediment values in the test stage are 0.95 and 0.014, respectively for the anfis model, and 0.50 and 4.97, respectively for the gep model. the best performance of the anfis model has been obtained for model number one. in this model, the r2 and the rmse obtained from the model are 0.95 and 0.014. the r2 and rmse of the models in predicting suspended sediment values in the test stage are 0.96, 0.0047 for the svr model, and 0.50, 4.97 for the gep model, respectively. the best performance of the gep model has been obtained for pattern number nine. in this model, the r2 and rmse obtained from the model are 0.99 and 0.010, respectively. the r2 and the rmse of the models in predicting the amount of suspended sediment in the test stage are respectively equal to 0.70, 0.015 for the anfis model and 0.78, 0.0185 tons respectively for the svr model. conclusion it can be seen that the performance of the gep model was better compared to other models. svr and anfis models are ranked second and third. in the next step, the best-selected pattern of anfis, svm, and gep models was used as the input of the gmdh model. first, input pattern one, which was selected as the best pattern for anfis and svm models, was introduced as the input of the gmdh model. in the training and test, the values of r2 statistical indices are 0.94 and 0.99, respectively, the rmse error value is 0.0079 and 0.0038, respectively, the mse value is 0.000062 and 0.000015, respectively, and the mape values are respectively 0.007 and 0.003. in the next step, input pattern nine, which was selected as the best pattern for the gep model, is introduced as gmdh input. in the training and test steps, the value of r2 is equal to 0.95 and 0.98 respectively, the rmse error value is equal to 0.0077 and 0.0045 respectively, and the mse value is equal to 0.0006 and 0.00002 respectively, and mape value is equal to 363 and 502. the results showed the acceptable performance of the gmdh model with the highest r2 equal to 0.99 and 0.98 and the lowest rmse equal to 0.0038 and 0.0045, respectively.
Keywords fuzzy neural network ,gene expression programming ,suspended load ,sedimentation ,supportvector machine
 
 

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