Loading [a11y]/accessibility-menu.js
Calibration and Error Correction Techniques for Network Analysis (Archived) | IEEE Courses | IEEE Xplore
Scheduled Maintenance: On Monday, 30 June, IEEE Xplore will undergo scheduled maintenance from 1:00-2:00 PM ET (1800-1900 UTC).
On Tuesday, 1 July, IEEE Xplore will undergo scheduled maintenance from 1:00-5:00 PM ET (1800-2200 UTC).
During these times, there may be intermittent impact on performance. We apologize for any inconvenience.

Calibration and Error Correction Techniques for Network Analysis (Archived)

Mar 2007
1 Hour

This course is part of our eLearning Archive, which includes older courses that may not be current or as user-friendly as courses designed more recently. The accuracy of Vector-Network-Analyzer (VNA) measurements depends critically on calibration and error correction techniques. This course will cover the evolution of conventional VNA calibration methods from the start of network analysis through the development of new calibration methods.

Author Keywords: Calibration, Ecal, Error Correction, Error Model, Flow Graph, General S-parameters, Network Analyzer, Residual Errors, SOLT, TRL
IEEE Keywords: Calibration, Error analysis, Network analyzers
Persistent Link: https://ieeexplore.ieee.org/servlet/opac?mdnumber=EW1062 More »
Level: Introductory
Doug Rytting Photo

Instructor

Doug Rytting

Doug Rytting Graduated with a BSEE from Utah State University and MSEE from Stanford University. Joined HP in June 1966 and worked on virtually all microwave network analyzers introduced since 1966. Hardware designer on the 8405 vector voltmeter and 8410 network analyzers. Hardware project manager o... Show More

Related Courses

Edge AI and Nanotechnology: Transforming Healthcare, Semiconductors, and IoT Course Image
Introductory

Edge AI and Nanotechnology: Transforming Healthcare, Semiconductors, and IoT

This course aims to teach learners how Edge AI and nanotechnologies actually impact our world, not just theoretical ideas. First, it examines how the technologies drastically transform healthcare and advance medical diagnostics. The course guides the learner through the science of nanomaterials, revealing advances in materials research and development. It also discusses the business aspect and how AI affects the semiconductor industry. The learner will create plans for businesses navigating this shift and acquire knowledge that connects technology to business requirements. In addition, the course will establish connections between nanoinformatics and the Internet of Things ecosystem to demonstrate how nanotechnology is a key factor in developing IoT applications. The course further evaluates the impact of AI on the IC market and provides an understanding of how Edge AI nanoinformatics is transforming healthcare and the IoT ecosystem.

(CSDA) Software Quality (Archived) Course Image
Introductory

(CSDA) Software Quality (Archived)

This course is part of our eLearning Archive, which includes older courses that may not be current or as user-friendly as courses designed more recently. This course is part of a series of eLearning courses designed to help you prepare for the examination to become a Certified Software Development Associate (CSDA) or to learn more about specific software engineering topics. Courses in this series address one or more of the fifteen Knowledge Areas that comprise the Software Engineering Body of Knowledge - or SWEBOK, upon which the Certification Exam is based. This course is intended to assess your understanding of software requirements through inline quizzes and feedback. The CSDA credential is intended for graduating software engineers and entry-level software professionals and serves to bridge the gap between your educational experience and real-world work requirements. This knowledge area deals with software quality considerations which transcend the life cycle processes. Software quality is a ubiquitous concern in software engineering, and so it is also considered in many of the other SWEBOK Knowledge Areas.

IoT Security: Challenges and Opportunities Course Image
Intermediate

IoT Security: Challenges and Opportunities

This course was developed by IEEE Educational Activities with the support from IEEE Internet of Things Technical Community. The overall goal of this course is to introduce you to IoT security, particularly focusing on existing and emerging challenges and opportunities. In this course, we will introduce types of IoT devices, for example in terms of the devices around us, the devices in us, and the devices on us, as well as the different types of data collected by IoT devices. Then, the importance of ensuring IoT security and the potential motivations of cyber attackers are briefly discussed. The associated challenges and research opportunities are also presented.