MathWorks
概述
总部
美国
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成立年份
1984
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公司类型
私营公司
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收入
$100m-1b
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员工人数
1,001 - 10,000
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网站
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公司介绍
MathWorks, Inc. 为工程师、科学家、数学家和研究人员开发和提供技术计算和基于模型的设计软件。该公司提供 MATLAB,用于数学计算、分析和可视化数据以及编写新的软件程序; Simulink 用于对复杂系统进行建模和仿真,例如车辆的自动变速器系统。它还提供用于处理图像和信号以及分析财务数据的各种工具。该公司服务于航空航天和国防、电子、汽车、金融服务、生物技术、制药和医疗、工业自动化和机械、半导体、通信以及计算机和办公设备行业。
该公司成立于 1984 年,总部位于马萨诸塞州内蒂克,在澳大利亚、中国、法国、德国、意大利、韩国、荷兰、西班牙、瑞典、瑞士和英国设有办事处。
物联网解决方案
物联网应用简介
MathWorks 是应用基础设施与中间件, 分析与建模, 功能应用, 传感器, 自动化与控制, 和 基础设施即服务 (iaas)等工业物联网科技方面的供应商。同时致力于航天, 汽车, 金融与保险, 医疗保健和医院, 石油和天然气, 包装, 铁路与地铁, 和 公用事业等行业。
技术栈
MathWorks的技术栈描绘了MathWorks在应用基础设施与中间件, 分析与建模, 功能应用, 传感器, 自动化与控制, 和 基础设施即服务 (iaas)等物联网技术方面的实践。
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设备层
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边缘层
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云层
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应用层
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配套技术
技术能力:
无
弱
中等
强
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实例探究.
Case Study
Mondi Implements Statistics-Based Health Monitoring and Predictive Maintenance
The extrusion and other machines at Mondi’s plant are large and complex, measuring up to 50 meters long and 15 meters high. Each machine is controlled by up to five programmable logic controllers (PLCs), which log temperature, pressure, velocity, and other performance parameters from the machine’s sensors. Each machine records 300–400 parameter values every minute, generating 7 gigabytes of data daily.Mondi faced several challenges in using this data for predictive maintenance. First, the plant personnel had limited experience with statistical analysis and machine learning. They needed to evaluate a variety of machine learning approaches to identify which produced the most accurate results for their data. They also needed to develop an application that presented the results clearly and immediately to machine operators. Lastly, they needed to package this application for continuous use in a production environment.
Case Study
Predictive Maintenance Software for Gas and Oil Extraction Equipment
If a truck at an active site has a pump failure, Baker Hughes must immediately replace the truck to ensure continuous operation. Sending spare trucks to each site costs the company tens of millions of dollars in revenue that those trucks could generate if they were in active use at another site. The inability to accurately predict when valves and pumps will require maintenance underpins other costs. Too-frequent maintenance wastes effort and results in parts being replaced when they are still usable, while too-infrequent maintenance risks damaging pumps beyond repair.
Case Study
Cutting Algorithm Development Time with MATLAB: Q&A with FLIR
Our hardware engineers were translating algorithms developed by algorithm engineers into HDL using written specifications, and without knowing exactly how the algorithms worked. If the FPGA implementation did not perform like our simulations, we never knew if the implementation or the algorithm was the problem. And even a small change to the algorithm meant rewriting most of the HDL.