Robotics in Weaponry using Machine Learning and Engineering Robotics in Weaponry using Machine Learning and Engineering

Robotics in Weaponry using Machine Learning and Engineering

Saurav Mallik y otros
    • $1,349.00
    • $1,349.00

Descripción editorial

The integration ML with robotics and weaponry is revolutionizing mechanical engineering by enabling intelligent systems that can adapt, learn, and operate autonomously. In robotics, ML allows systems to process vast amounts of data from sensors to make real-time decisions. Robots, whether in industrial settings or autonomous vehicles, can navigate environments, recognize objects, and optimize tasks through reinforcement learning algorithms. In military applications, robotics combined with ML enhances autonomous weapon systems. Unmanned aerial vehicles (UAVs) and autonomous ground systems are increasingly utilized for surveillance, targeting, and even combat roles. These systems employ ML to improve target recognition, threat analysis, and adaptive decision-making in dynamic battle environments . This reduces human risk in conflict zones and can lead to more precise operational outcomes. Mechanical engineering plays a critical role in designing the physical systems that enable robotic mobility, structure, and function. Advanced mechanical systems integrate machine learning for predictive maintenance, fault diagnosis, and condition monitoring in weaponry and industrial robotics.

Mechanical engineers design robots with complex actuators, sensors, and control mechanisms that respond to real-time data processed by machine learning algorithms. The combination of robotics, ML, and mechanical engineering is driving the development of next-generation intelligent systems. These innovations not only improve automation but are also crucial for defence systems, manufacturing, and autonomous vehicle technologies. This synergy promises greater efficiency, adaptability, and autonomy in a range of applications.

Key Features: Highlights Real-World Applications Explores Advanced AI Techniques Addresses Ethical and Security Concerns Equips Readers with Hands-On Knowledge Forecasts Future Technological Trends

GÉNERO
Informática e Internet
PUBLICADO
2026
12 de mayo
IDIOMA
EN
Inglés
EXTENSIÓN
490
Páginas
EDITORIAL
CRC Press
VENDEDOR
Taylor & Francis Group
TAMAÑO
30.8
MB
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