Research and practice on building an intelligent connected vehicle simulation test scenario library based on vehicle connected network roadside data
TANG Shaochun1, SHEN Yunqi2, CAI Guohua3, YAN Lidong4
1. Deqing County Vehicle Network Intelligent Connectivity Industry Development Co., Ltd., Huzhou 313299, China 2. Huzhou Moganshan State-owned Capital Holding Group Co., Ltd., Huzhou 313299, China 3. Deqing County Ji Tong Vehicle Comprehensive Performance Testing Co., Ltd., Huzhou 313299, China 4. Huzhou branch, China Mobile Communications Group Zhejiang Co., Ltd., Huzhou 313098, China
TANG Shaochun, SHEN Yunqi, CAI Guohua, YAN Lidong. Research and practice on building an intelligent connected vehicle simulation test scenario library based on vehicle connected network roadside data[J]. Information and Communications Technology and Policy, 2024, 50(6): 83-88.
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