亚洲成人1区2区3区,免费黄色成人网站在线看,18 午夜精品福利啪啪,亚洲国产综合久久久精品潘金莲,亚洲国产精品无码久久久久久久久
網站導航

MP2101 Triconex 模擬輸入輸出模塊

當前位置:主頁 > 產品展示 > 英維思 Triconex

MP2101 Triconex 模擬輸入輸出模塊

型號: MP2101 Triconex

分類: 英維思 Triconex

聯(lián)系人:何經理

手機:13313705507

QQ:2235954483

郵箱:2235954483@qq.com

地址:廈門市思明區(qū)呂嶺路1733號萬科創(chuàng)想中心2009室

詳細介紹

在邊緣啟用人工智能功能可以提高運營效率并降低工業(yè)應用的風險和成本。通過在實施過程中解決特定的處理要求,為您的工業(yè) AIoT 應用選擇合適的計算平臺。

IIoT 應用程序正在生成比以往更多的數據。在許多工業(yè)應用中,尤其是位于偏遠地區(qū)的高度分布式系統(tǒng),可能無法將大量原始數據不斷發(fā)送到中央服務器。為了減少延遲、降低數據通信和存儲成本并提高網絡可用性,企業(yè)正在將人工智能和機器學習轉移到邊緣,以便在現(xiàn)場進行實時決策和行動。

這些在物聯(lián)網基礎設施上部署人工智能能力的應用被稱為“AIoT”。盡管用戶仍需要在云端訓練 AI 模型,但可以通過在邊緣計算機上部署訓練好的 AI 模型,在現(xiàn)場執(zhí)行數據收集和推理。本文討論如何為工業(yè) AIoT 應用選擇合適的邊緣計算機,并提供幾個案例研究以幫助入門。
將 AI 帶入 IIoT

工業(yè)物聯(lián)網 (IIoT) 的出現(xiàn)使廣泛的企業(yè)能夠從以前未開發(fā)的來源收集大量數據,并探索提高生產力的新途徑。通過從現(xiàn)場設備和機械中獲取性能和環(huán)境數據,組織現(xiàn)在可以使用更多信息來做出明智的業(yè)務決策。不幸的是,有太多的 IIoT 數據供人類單獨處理,因此大部分信息都未經分析和未使用。
因此,難怪企業(yè)和行業(yè)專家正在轉向 IIoT 應用程序的人工智能和機器學習解決方案,以獲取整體視圖并更快地做出更明智的決策。


MP2101 Triconex 模擬輸入輸出模塊

 

連接到互聯(lián)網的工業(yè)設備數量驚人地逐年增長,預計到 2025 年將達到 416 億個端點。更令人難以置信的是每臺設備產生的數據量。

事實上,手動分析制造裝配線上所有傳感器生成的信息可能需要一生的時間。難怪“不到一半的組織結構化數據被積極用于決策,而只有不到 1% 的非結構化數據被分析或使用”。

對于 IP 攝像機,每天生成的近 1.6 EB 視頻數據中只有 10% 得到分析。盡管我們有能力收集越來越多的信息,但這些數字表明數據分析存在驚人的疏忽。人類無法分析我們產生的所有數據正是企業(yè)正在尋找將人工智能和機器學習納入其 IIoT 應用程序的原因。

想象一下,如果我們每周 5 天,每天 8 小時,僅依靠人類視覺在制造裝配線上手動檢查高爾夫球上的微小缺陷。即使公司能夠負擔得起一整支檢查員,每個人仍然自然容易疲勞和人為錯誤。

同樣,鐵路軌道扣件的人工目視檢查只能在列車停止運行后的半夜進行,不僅耗時而且難度大。同樣,對高壓輸電線和變電站設備進行人工檢查也會使人員面臨額外的風險。

MP2101 Triconex 模擬輸入輸出模塊
我司產品廣泛應用于數控機械 冶金,石油天然氣,石油化工,
化工,造紙印刷,紡織印染,機械,電子制造,汽車制造,
塑膠機械,電力,水利,水處理/環(huán)保,市政工程,鍋爐供暖,能源,輸配電。

MP2101 Triconex 模擬輸入輸出模塊


 

Enabling AI capabilities at the edge can improve operational efficiency and reduce risks and costs for industrial applications. Choose the right computing platform for your industrial AIoT application by addressing specific processing requirements during implementation.

IIoT applications are generating more data than ever before. In many industrial applications, especially highly distributed systems located in remote areas, constantly sending large amounts of raw data to a central server might not be possible. To reduce latency, reduce data communication and storage costs, and increase network availability, businesses are moving AI and machine learning to the edge for real-time decision-making and actions in the field.

These cutting-edge applications that deploy AI capabilities on IoT infrastructures are called the “AIoT.” Although users still need to train AI models in the cloud, data collection and inferencing can be performed in the field by deploying trained AI models on edge computers. This article discusses how to choose the right edge computer for industrial AIoT applications and provides several case studies to help get started.

Bringing AI to the IIoT

The advent of the Industrial Internet of Things (IIoT) has allowed a wide range of businesses to collect massive amounts of data from previously untapped sources and explore new avenues for improving productivity. By obtaining performance and environmental data from field equipment and machinery, organizations now have even more information at their disposal to make informed business decisions. Unfortunately, there is far too much IIoT data for humans to process alone so most of this information goes unanalyzed and unused.
Consequently, it is no wonder that businesses and industry experts are turning to artificial intelligence and machine learning solutions for IIoT applications to gain a holistic view and make smarter decisions more quickly.

IIoT data goes unanalyzed

The staggering number of industrial devices being connected to the Internet continues to grow year after year and is expected to reach 41.6 billion endpoints in 2025. What’s even more mind-boggling is how much data each device produces.

In fact, manually analyzing the information generated by all the sensors on a manufacturing assembly line could take a lifetime. It’s no wonder that “less than half of an organization’s structured data is actively used in making decisions, and less than 1% of its unstructured data is analyzed or used at all”.

In the case of IP cameras, only 10% of the nearly 1.6 exabytes of video data generated each day gets analyzed. These figures indicate a staggering oversight in data analysis despite our ability to collect more and more information. This inability for humans to analyze all of the data we produce is precisely why businesses are looking for ways to incorporate artificial intelligence and machine learning into their IIoT applications.

Imagine if we relied solely on human vision to manually inspect tiny defects on golf balls on a manufacturing assembly line for 8 hours each day, 5 days a week. Even if companies could afford a whole army of inspectors, each person is still naturally susceptible to fatigue and human error.

Similarly, manual visual inspection of railway track fasteners, which can only be performed in the middle of the night after trains have stopped running, is not only time-consuming but also difficult to do. Likewise, manual inspection of high-voltage power lines and substation equipment also exposes human personnel to additional risks.


推薦產品

如果您有任何問題,請跟我們聯(lián)系!

聯(lián)系我們

Copyright © 2002-2020 廈門雄霸電子商務有限公司 版權所有

閩公網安備 35020302034927號

備案號:閩ICP備14012685號

地址:廈門市思明區(qū)呂嶺路1733號萬科創(chuàng)想中心2009室

在線客服 聯(lián)系方式 二維碼

服務熱線

13313705507

掃一掃,關注我們

俄罗斯18无码精品一区 | 少妇精品久久久久久久久久 | 性感白丝AV一级片 | 黄色美女网站站站站站站站站站站站站站 | 少妇一级婬片免费看… | 激情视频激情小说激情图片 | 麻豆亚洲AV成人无码一区精品 | 国产在线观看无码免费视频 | 免费观看婬A片AAA毛私人玩 | 黄色视频里在线观看 | 国产精品一级特婬AV片在线看 | 国产成人av一区二区三区在线 | 国产露脸精品国产探花 | 欧美在线观看一区二区三区 | 亚洲av无码乱码a片101 | 91国内精品久久久久精 | 专干老熟女200部播放 | 电车痴汉五十路熟妇 | 蜜桃av抽搐高潮一区二区 | 黄色三级片日韩av在线播放 | 日韩少妇成熟A片无码专区 国产在线观看国产精品产拍 | 国产又大又黑又粗免费视频 | 粉嫩AV一区二区夜夜嗨 | 寡妇高潮一级毛片免费看中文字幕 | 丰满人妻熟妇乱又伦精品软件 | 日本强伦轩人妻中文字幕 | 国产 浪潮AV性色Av水牛 | 动漫裸身性感美女视频在线播放 | 波多野结衣一级婬片A片免费下载 | 欧美精品成人在线视频 | 亚洲综合五月天婷婷丁香 | 嫩BBB槡BBBB槡BBBB18 | 国产AV成人精品一区二区三区亅 | 中文字幕精品在线观看 | 五月天国产婷婷手机小视频 | 清纯白嫩初高中在线播放 | 江苏妇搡BBBB搡BBBB | 色avav色a∨爱avav亚洲色拍 | 日本人妻人人人澡人人 | 成人午夜色情无码精品 | 日韩精品一区二区三区熟女人妻 |