کتابنگاری
رجبزاده، ح. ا.، نظری سامانی، ع. ا.، احمدی، ح. و مهرابی، ع. ا.، ۱۳۹۲- بررسی و تحلیل عوامل و آستانههای محیطی مؤثر بر فرسایش خندقی با تأکید بر شرایط توپوگرافی و پوشش زمین (مطالعه موردی: حوزه آبخیز کلوچه بیجار)، اولین همایش ملی برنامهریزی، حفاظت از محیط زیست و توسعه پایدار، همدان، انجمن ارزیابان محیط زیست هگمتانه.
سازمان جغرافیایی نیروهای مسلح، 1378- نقشههای توپوگرافی 1:50000، لجنه ورقه 7062II، دزج7062IV ، کوه کله قوچ ورقه 6962II و شاهرود ورقه 6962I.
سازمان زمینشناسی کشور، 1377- نقشه زمینشناسی 1:100000 برگههای شاهرود و بسطام.
عربعامری، ع. ر.، شیرانی، ک. و رضایی، خ.، 1396الف- ارزیابی مقایسهای روشهای احتمالاتی وزن واقعه و نسبت فراوانی در پهنه بندی خطر زمین لغزش (مطالعه موردی: حوضه آبخیز ونک)، پژوهشنامه مدیریت حوزه آبخیز، سال 8، شماره 15، صص. 147 تا 160.
عربعامری، ع.ر.، شیرانی، ک. و تازه، م.، 1396ب- آنالیز عددی عوامل موثر در رخداد زمینلغزش و پهنهبندی حساسیت آن با روشهای رگرسیون لجستیک و رگرسیون چندمتغیره خطی (مطالعه موردی: حوضه ماربر)، مرتع و آبخیزداری، سال 70، شماره 1، صص. 151 تا 168.
منصوری، م.، شیرانی، ک.، قاضیفرد، ا. و امامی، س. ن.، 1395- پهنهبندی خطر زمینلغزش به روشهای آنتروپی و وزن شاهد (مطالعه موردی: منطقه دو آب صمصامی استان چهارمحال و بختیاری)، علوم زمین، سال 26، شماره 102، صص. 267 تا 280.
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