


Insight AI | NetEase Smart: Driverless technology is accelerating the commercialization of engineering robots
With the rapid development of driverless technology, driverless taxis have been commercialized in many cities, and their popularity is obvious to all. Autonomous driving technology is meeting people's new needs with high efficiency and convenience, and is promoting the transformation and upgrading of the industry. The promotion and application of this technology is changing our lifestyle at an unprecedented speed, and is also opening up new opportunities for autonomous driving technology in other fields. The commercialization implementation provides experience.
In the engineering machinery construction industry, we are faced with the increasingly prominent limitations of traditional manual operations and semi-mechanized operations, such as project progress delays caused by low construction efficiency, frequent safety hazards that pose a threat to workers’ lives, and high costs. The labor costs continue to compress the profit margins of enterprises, and these challenges have become bottlenecks restricting the high-quality development of the industry. Therefore, it is generally recognized within and outside the industry that only through technological innovation and intelligent transformation can we fundamentally solve these problems and promote the development of engineering machinery construction in a more efficient, safer, and more economical direction. This is not only an urgent need for the development of the industry itself, but also the only way to follow the trend of the times and achieve sustainable development.
Taking the coal field, a major mineral resource, as an example, with the improvement of production safety awareness, the number of safety accidents and deaths in China's coal mines have generally shown a downward trend, but the data will rebound significantly in 2022, with year-on-year increases of 85% and 38% respectively. At the same time, compared with developed countries, the number of deaths per million tons of coal mines in China is still higher, and there is room for improvement in safety production levels. Therefore, the mining industry urgently needs to promote the transformation of the production process to unmanned and less-manned operations to enhance its production safety. By applying remote control, driverless and other technologies, smart mines can significantly reduce mine safety accidents. Its advanced safety system can realize real-time analysis of the construction environment, timely discover and troubleshoot safety hazards, thereby greatly improving the safety production level of mines.
NetEase Lingdong is the first robot brand of NetEase Group and is committed to becoming the world's leading provider of intelligent solutions for construction machinery. The widespread application of NetEase's smart excavating robots and loading robots is not intended to completely replace the jobs of construction workers, but to serve as a powerful assistant to humans, helping them improve their work efficiency and reduce their workload, especially in those dangerous and high-intensity tasks. In construction operations that are monotonous, repetitive and in harsh environments, NetEase smart robots play an irreplaceable role, demonstrating the infinite possibilities of human-machine collaboration.
Based on NetEase Fuxi’s self-developed large-scale industrial model and agent-oriented programming theory, NetEase smart mining robot has regional automatic loading, automatic dumping, tracking navigation, digging wherever you click, one-click slope brushing, one-click Automatic functions such as leveling support a variety of remote terminal controls, providing users with a rich and diverse control experience. In real mine construction operations, NetEase's smart mining robots have achieved 24 hours of continuous uninterrupted automated operations, with an average daily excavation task of more than 2,000 cubic meters, speeding up production progress by more than 30%.
NetEase Smart Loading Robot relies on its advanced AI adaptive algorithm model to achieve efficient unmanned autonomous loading, shoveling, transportation and unloading operations. Excellent obstacle recognition ability ensures the safety and stability of the operation process. The 3D digital twin scene constructed in real time accurately simulates the working environment and realizes holographic visualization of the construction process. During the construction of the concrete mixing station, the NetEase smart loading robot realizes all-weather unmanned loading operations, which can fully guarantee the actual production demand of nearly 1,000 cubic meters of the mixing station for 12 hours a day.
At present, NetEase smart engineering robots have been deeply used in many fields such as mines, mixing stations, ports, emergency, and vocational education with their excellent performance and wide applicability. Successful cases are spread across more than ten provinces across the country. It not only helps construction units solve production safety problems, but also effectively alleviates the long-standing pain points of difficulty in recruiting and employing workers in the construction machinery industry, and has won wide recognition and high praise from users.
新しい高品質の生産性を精力的に促進するという文脈で、NetEase Smart はテクノロジーをエンジンとして利用し、建設機械建設業界をより効率的で安全、より環境に優しい方向に発展させます。将来的には、NetEase Smart は建設機械とインテリジェンスをつなぐ架け橋となり、より多くの AI 機能を人々の生産と生活に深く統合し、建設機械業界をより輝かしい未来の時代に導きます。
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