电动无人矿山
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电动无人驾驶重塑矿山运输 宁德时代与易控智驾签署战略合作协议
Zheng Quan Ri Bao Wang· 2025-10-30 10:45
Core Insights - The strategic partnership between Yikong Zhijia Technology Co., Ltd. and CATL aims to advance the development of electric unmanned mining operations, focusing on green, intelligent, and efficient transformation in the mining industry [1][2] Group 1: Partnership Details - The collaboration will leverage capital, technology, market, and ecosystem synergies to address key challenges in extreme mining conditions, safety requirements, and total lifecycle costs [1] - The partnership signifies a shift from technology validation to large-scale industrial development in electric unmanned mining [1] Group 2: Areas of Cooperation - Joint research on battery technology will be conducted, utilizing operational data from over 20 mines to develop next-generation batteries suitable for extreme conditions [2] - The companies will create benchmark projects for safe and efficient unmanned transportation in open-pit mines, aiming for replicability in new mining sites [2] - The goal is to expand globally after validating various domestic scenarios, promoting integrated solutions of "new energy + unmanned driving" and contributing to international green mining standards [2] Group 3: Future Projections - By September 2025, over 2,000 units of new energy unmanned mining trucks are expected to be operational, with a cumulative running distance exceeding 65 million kilometers [2] - The partnership aims to initiate a new era of mining operations centered around green energy and intelligent driving through deep integration and complementary capabilities [2]
聚焦电动无人矿山场景 宁德时代与易控智驾签署战略协议
Huan Qiu Wang· 2025-10-29 14:09
Core Insights - The strategic partnership between Yikong Zhijia and CATL aims to advance the development of electric unmanned mining operations towards large-scale and industrialized growth [1][3] Group 1: Strategic Collaboration - Yikong Zhijia and CATL will focus on multi-dimensional collaboration to promote the transformation of the mining industry towards greener, smarter, and more efficient practices [1] - The partnership will integrate core technologies such as battery technology, intelligent manufacturing, and autonomous driving to address challenges in extreme mining conditions and lifecycle costs [3] Group 2: Project Scope and Goals - The collaboration will primarily revolve around battery technology, mining benchmarks, and global market expansion [5] - Both companies plan to develop next-generation specialized batteries suitable for extreme conditions based on operational data from over 20 mines [5] - They aim to create a safe, efficient, and replicable model for unmanned transportation in open-pit mines, gradually expanding to new mining sites [5] Group 3: Future Projections - By September 2025, the partnership expects to have over 2,000 electric unmanned mining trucks in operation, with a cumulative operating mileage exceeding 65 million kilometers [5] - The initiative will initially validate various typical scenarios in China before promoting integrated "new energy + autonomous driving" solutions globally, contributing to the establishment of international green mining standards [5]
宁德时代与易控智驾战略合作
Mei Ri Jing Ji Xin Wen· 2025-10-25 00:02
Core Viewpoint - The strategic partnership between Easy Control Intelligent Driving and CATL aims to advance the development of electric unmanned mining, transitioning from technology validation to large-scale industrialization [1] Group 1: Strategic Collaboration - Easy Control Intelligent Driving and CATL signed a strategic cooperation agreement in Ningde, Fujian [1] - The collaboration will focus on multiple dimensions including capital, technology, market, and ecosystem [1] - This partnership signifies a shift towards green, intelligent, and efficient transformation in the mining industry [1] Group 2: Industry Development - The construction of electric unmanned mines is moving from the previous stage of technology validation to a fast track of large-scale and industrial development [1]