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مدل پیشبینی ارزیابی اثر گردشگری بر درصد پوشش تاجی گیاهی پارک ملی و پناهگاه حیاتوحش قمیشلو | ||
نشریه محیط زیست طبیعی | ||
مقاله 5، دوره 73، شماره 2، مرداد 1399، صفحه 257-270 اصل مقاله (1.2 M) | ||
نوع مقاله: مقاله پژوهشی | ||
شناسه دیجیتال (DOI): 10.22059/jne.2020.292789.1854 | ||
نویسندگان | ||
علی جهانی* 1؛ مریم صفاریها2 | ||
1دانشیار دانشکده محیط زیست کرج | ||
2دکترای مرتعداری، گروه احیای مناطق خشک و کوهستانی، دانشکده منابعطبیعی، دانشگاه تهران | ||
چکیده | ||
مدیریت اکوسیستمهای طبیعی در مناطق تحت حفاظت گردشگری اثرات زیست محیطی بسیاری ایجاد میکند که یک موضوع چالشانگیز جهانی در زمینه حفاظت است. هدف از این پژوهش مدلسازی کاهش درصد پوشش تاجی گیاهی جهت ارزیابی اثر گردشگری با استفاده از شبکه عصبی مصنوعی و تعیین میزان اثرگذاری متغیرهای اکولوژیکی و شدت گردشگری بر آن است. پژوهش حاضر در پارک ملی و پناهگاه حیات وحش قمیشلو با مساحت 10 هکتار زون تفرج متمرکز و 100 هکتار زون تفرج گسترده انجام شده است. در این مطالعه از 100 قطعه نمونه آماربرداری و اندازهگیری متغیرهای اکولوژیکی و گردشگری و تغییرات درصد پوشش تاجی گیاهی در طی یکسال (بهار 1396 تا بهار 1397) استفاده شد. روش مدلسازی شبکه عصبی مصنوعی جهت پیشبینی کاهش درصد پوشش تاجی گیاهی با استفاده از 11 متغیر محیطی انجام شده است. با توجه به نتایج، مدل با ساختار 1-8-11 (11 متغیر ورودی، 8 نورون در لایه مخفی و یک متغیر خروجی) با توجه به بیشترین مقدار ضریب تبیین در سه دسته داده آموزش، اعتبارسنجی و آزمون معادل 95/0، 87/0 و 93/0، بهترین عملکرد بهینهسازی ساختار را نشان میدهد. بر این اساس طبقه شدت گردشگری، شیب زمین، شوری خاک، عمق خاک و درصد ماده آلی خاک با ضریب اثرگذاری 59/8، 02/2، 88/1، 81/1 و 65/1 به ترتیب بیشترین تأثیر را در میزان کاهش درصد پوشش تاجی گیاهی در منطقه از خود نشان میدهند. مدل ارائه شده در این پژوهش یک سیستم پشتیبان تصمیمگیری در ارزیابی اثرات گردشگری در مناطق تحت حفاظت شناخته شده و امکان پیش-بینی میزان کاهش درصد پوشش تاجی گیاهی در زونهای تفرجی پارکهای ملی را فراهم میکند. | ||
کلیدواژهها | ||
پارک ملی؛ پوشش تاجی؛ گردشگری؛ شبکه عصبی مصنوعی؛ زون تفرجی | ||
عنوان مقاله [English] | ||
The prediction model of tourism impact assessment in vegetation canopy cover of Qhamishloo National park and Wildlife Refuge | ||
نویسندگان [English] | ||
Ali Jahani1؛ Maryam Saffariha2 | ||
1College of Environment | ||
2Ph.D in Rangeland Management, College of Natural Resources, University of Tehran, Tehran, Iran | ||
چکیده [English] | ||
The protected areas are managed by ecological targets including ecological and biological protection of nature and at the same time the goal of tourism use. The management of natural ecosystems in protected areas and where tourism creates many environmental impacts is a global challenging issue in the field of protection. The aim of this study is to model the vegetation canopy cover reduction in Qhamishloo national park and wildlife refuge in order to evaluate the impact of tourism using artificial neural network to determine the influence of the ecological variables and severity of tourism on protected areas. This study has been performed in Qhamishloo national park and wildlife refuge with an area of 10 hectares intensive tourism zone and 100 hectares extensive tourism zone. In this study to evaluate the impact of tourism on vegetation canopy cover reduction, 100 inventory sample plots were used to measure ecological and tourism variables and vegetation canopy cover density changes along one year (spring 2017-2018). Artificial neural network modeling method has been used to predict the reduction of vegetation canopy cover density using 11 environmental variables. According to the results, the model with the structure of 1-8-11 (11 input variables, 8 neurons in hidden layer and 1 output variable) with regard to the maximum coefficient of determination in the three categories of training, validation and test data set which equal 0.95, 0.87, and 0.93 respectively, declare the best function of structural optimization. On this basis, the intensity of tourism, land slope, soil salinity, soil depth and percentage of organic matter of soil with the coefficient of determination of 8.59, 2.02, 1.88, 1.81 and 1.65 respectively show the highest effect on the vegetation canopy cover reduction in the region. The proposed model in this study provides a decision support system in tourism impacts assessment in the protected areas and enables prediction of the vegetation canopy cover reduction in recreational zones of national parks. | ||
کلیدواژهها [English] | ||
National park, canopy cover, tourism, artificial neural network, recreational zone | ||
مراجع | ||
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