Weld monitoring methods ensure the weld's quality and correctness during welding. The term is generally applied to automated monitoring for weld-quality purposes and secondarily for process-control purposes such as vision-based robot guidance. Visual weld monitoring is also performed during the
welding process. On vehicular applications, weld monitoring aims to enable improvements in the quality, durability, and safety of vehicles – with cost savings in the avoidance of recalls to fix the large proportion of systemic quality problems that arise from suboptimal welding. Quality monitoring of automatic welding can save production downtime and reduce the need for product reworking and recall. Industrial monitoring systems encourage high production rates and reduce scrap costs.
Inline coherent imaging Inline coherent imaging (ICI) is a recently developed interferometric technique based on
optical coherence tomography that is used for quality assurance of keyhole
laser beam welding, a welding method that is gaining popularity in a variety of industries. ICI aims a low-powered broadband light source through the same optical path as the primary welding laser. The beam enters the keyhole of the weld and is reflected back into the head optics by the bottom of the keyhole. An interference pattern is produced by combining the reflected light with a separate beam that has traveled through a path of a known distance. This interference pattern is then analyzed to obtain a precise measurement of the depth of the keyhole. Because these measurements are acquired in real-time, ICI can also be used to control the laser penetration depth by using the depth measurement in a feedback loop that modulates the laser's output power.
Transient thermal analysis method Transient thermal analysis is used for range of weld optimization tasks.
Signature image processing method Signature image processing (SIP) is a technology for analyzing electrical data collected from welding processes. Acceptable welding requires exact conditions; variations in conditions can render a weld unacceptable. SIP allows the identification of welding faults in real time, measures the stability of welding processes, and enables the optimization of welding processes.
Development The idea of using electrical data analyzed by algorithms to assess the quality of the welds produced in robotic manufacturing emerged in 1995 from research by Associate Professor Stephen Simpson at the
University of Sydney on the complex physical phenomena that occur in welding arcs. Simpson realized that a way of determining the quality of a weld could be developed without a definitive understanding of those phenomena. The development involved: • a method for handling sampled data blocks by treating them as phase-space portrait signatures with appropriate image processing. Typically, one second's worth of sampled welding voltage and current data are collected from GMAW pulse or short
arc welding processes. The data is converted to a 2D histogram, and signal-processing operations such as image smoothing are performed. • a technique for analyzing welding signatures based on statistical methods from the social sciences, such as
principal component analysis. The relationship between the welding voltage and the current reflects the state of the welding process, and the signature image includes this information. Comparing signatures quantitatively using principal component analysis allows for the spread of signature images, enabling faults to be detected and identified The system includes algorithms and mathematics appropriate for real-time welding analysis on personal computers, and the multidimensional optimization of fault-detection performance using experimental welding data. Comparing signature images from moment to moment in a weld provides a useful estimate of how stable the welding process is. "Through-the-arc" sensing, by comparing signature images when the physical parameters of the process change, leads to quantitative estimates—for example, of the position of the weld bead. Unlike systems that log information for later study or use X-rays or ultrasound to check samples, SIP technology looks at the electrical signal and detects faults when they occur. Data blocks of 4,000 points of electrical data are collected four times a second and converted to signature images. After image processing operations, statistical analyses of the signatures provide a quantitative assessment of the welding process, revealing its stability and reproducibility and providing fault detection and process diagnostics.
Industrial application SIP provides the basis for the
WeldPrint system, which consists of a front-end interface and software based on the SIP engine and relies on electrical signals alone. It is designed to be non-intrusive and sufficiently robust to withstand harsh industrial welding environments. The first major purchaser of the technology,
GM Holden provided feedback that allowed the system to be refined in ways that increased its industrial and commercial value. Improvements in the algorithms, including multiple parameter optimization with a server network, have led to an order-of-magnitude improvement in fault-detection performance over the past five years.
WeldPrint for arc welding became available in mid-2001. About 70 units have been deployed since 2001, about 90% used on the shop floors of automotive manufacturing companies and their suppliers. Industrial users include
Lear (UK), Unidrive, GM Holden,
Air International and QTB Automotive (Australia). Units have been leased to Australian companies such as Rheem, Dux, and
OneSteel for welding evaluation and process improvement. The
WeldPrint software received the
Brother business software of the year award (2001); in 2003, the technology received the A$100,000 inaugural
Australasian Peter Doherty Prize for Innovation; and WTi, the University of Sydney's original spin-off company, received an AusIndustry Certificate of Achievement in recognition of the development. SIP has opened opportunities for researchers to use it as a measurement tool both in welding and in related disciplines, such as
structural engineering. Research opportunities have opened up in the application of biomonitoring of external
EEGs, where SIP offers advantages in interpreting the complex signals
Weld mapping Weld mapping is the process of assigning information to a weld repair or joint to enable easy identification of weld processes, production (welders, their qualifications, date welded), quality (visual inspection, NDT, standards and specifications) and traceability (tracking weld joints and welded castings, the origin of weld materials). Weld mapping should also incorporate a pictorial identification to represent the weld number on the fabrication drawing or casting repair. Military, nuclear and commercial industries possess unique quality standards (e.g.,
ISO,
CEN,
ASME,
ASTM,
AWS,
NAVSEA) which direct weld mapping procedures and specifications, both in
metal casting in which defects are removed and filled in via
GTAW (TIG welding) or
SMAW (stick welding) processes, or
fabrication of weld joints which primarily involves
GMAW (MIG welding). == See also ==