Mr. Ranran Wang | Artificial Intelligence | Research Excellence Award
Mr. Ranran Wang | Artificial Intelligence | Shandong Agricultural University | China
Mr. Ranran Wang is an accomplished PhD scholar, associate professor, IEEE member, and seasoned academic in mechanical, electronic, and agricultural engineering, widely recognized for his contributions to intelligent detection systems, agricultural mechanization, precision management technologies, and integrated engineering innovations. With a strong educational foundation beginning with a Bachelor of Science in Electrical Engineering from Shandong University of Technology, followed by a master’s degree from the School of Electrical Engineering at Shandong University, and a PhD in Mechanical and Electronic Engineering from Shandong Agricultural University, Wang Ranran further expanded his expertise through postdoctoral research at the Plant Protection Postdoctoral Research Station and international academic collaboration as a visiting scholar at Iwate University in Japan. Professionally, Wang Ranran has maintained a long-standing academic role at the College of Mechanical and Electronic Engineering at Shandong Agricultural University, where he has contributed to teaching, research, academic evaluation, scientific leadership, and interdisciplinary innovation. He has served as a reviewer for multiple journals, a mentor for elite engineering talent programs, an expert reviewer for investment projects, and a key member of numerous provincial and municipal scientific committees. His professional service includes roles such as expert reviewer for forestry, agricultural engineering, water and fertilizer integration facilities, rural revitalization, electric power industry development, and technological innovation alliances, as well as leadership positions including technology commissioner, science and technology mayor, and vice chairman in provincial agricultural technology extension associations.
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Featured Publications
Non-Destructive Prediction of Apple Firmness by Acoustic-Vibrational Signal Ridge Regression Analysis
– Applied Fruit Science, 2025