91尻逼视频 I 欧美在线亚洲 I 亚洲人成色77777 I 成人性视频欧美一区二区三区 I 性色av一区 I 99re这里只有精品视频在线观看 I 亚欧毛片 I 韩国精品三级bd I 久操欧美 I 久久久久无码中 I 91久久国产涩涩涩涩涩涩 I 欧美三级香港三级日本三级 I 一区二区三区视频免费看 I 青青草伊人 I 亚洲美女网站 I 女人大p毛片女人大p毛片 I 亚洲一二三区av I 女人做爰视频偷拍 I 蜜臀久久99精品久久久 I 日韩激情三级 I 韩国午夜福利片在线观看 I 亚洲国产精品电影人久久 I 91九色国产蝌蚪 I 黄色www. I 久久久思思 I 婷婷色在线 I 亚洲三级黄色 I 亚洲熟女综合色一区二区三区 I 黄色动漫av I 色香阁综合无码国产在线 I 国产学生不戴套在线看 I 日韩高清av一区二区三区 I 漫画无翼乌羞羞漫画 I 欧洲中文字幕精品 I 欧美xxxx综合视频

Service Hotline

400-9619-700

Index >>

Hannover Messe Takes a Closer Look at Artifical Intelligence in Manufacturing

08 Feb,2023

3.jpg

The only way for industrial enterprises to remain competitive in the coming years is by linking AI to their process automation, warns Prof. Dr. Sepp Hochreiter of the JKU Linz University in Austria. His message to the industry: “Don’t screw this one up.” But AI in industry or manufacturing does, in fact, differ from many other sectors. And this goes beyond the issue of mere data acquisition and processing.


Today, prototypes can often be developed quickly, but the challenge in industrial AI projects – over and above the acquisition and the processing of data – usually lies in integrating the application into a plant, cell, conveyor system or production line. In other words, AI plug and play is rare.


Hannover Messe 2023 thus presents the ideal networking hub. This is where AI developers, software engineers get together with users to jointly develop industrial-grade AI products or processes. Whereas in the past, the focus was on use cases in which errors or anomalies were detected or prognostications were made, industry in 2023 is focusing on the optimization of processes and the use of AI methods for simulation, testing and product development.


On the second day of the show, the Monolith AI firm will present its solution for simulation in mechanical engineering as part of the Industrial AI event on the Industrial Transformation Stage in Hall 3. Monolith AI’s approach goes even further than the booming simulation industry. Every simulation performed develops a model, because the creators rely on real-time data. This means mechanical engineering could save on numerous testing procedures. In addition, AI makes suggestions to developers about their products, based on the real-time data. This England-based firm has some very ambitious goals: By 2026, they aim to reduce the product development time of 100,000 engineers by 50 percent. At the same event, machine manufacturer Hawe Hydraulik will report on how it is using reinforcement learning and then implementing the technology in its processes.


Generative AI, for example in the form of the DALL-E tool, will also change the face of industrial product development, with the designer receiving support from an intelligent agent. Festo, the exhibiting company, has been working in the area of reinforcement learning for manufacturing processes for several years. The next step involves the use of generative algorithms for product development. OpenAI recently published 3D models for DALL-E. The challenge in the industry, apart from the 3D challenge, is that the products must also be moveable. In addition to Festo, which is also bringing its new Cobot, Autodesk is also addressing this issue.


The challenge of integrating machine learning into processes is also being addressed by process control suppliers – Siemens is moreover focusing on providing ML Ops, in which engineers provide reliable machine learning models for efficient production and continually maintain them. Siemens will also be providing an insight into an AI project at a customer’s site at the Industrial AI event on the second day of the fair.


In addition, visitors will find AI tools and use cases to draw inspiration on the tradeshow floor. Omron will present a Cell-Line Control System, while Beckhoff will showcase vision solutions and Dürr will feature its DXQanalyze product family. The promise: This enables the comprehensive logging of all available process data to detect potential product quality defects or emerging equipment wear in real time. The system uses data that is condensed at a higher level to draw conclusions about the functionality of individual steps along the value chain, based on documented product quality.