Pipe welding integrates machine learning to boost production – TheFabricator.com
The SWR was designed specifically for automated pipe welding.
For Joe White Tank in Fort Worth, Texas, increased demand for construction projectsand more competitive bidding for the pipe fabrication jobs within those projectsrecently presented a new challenge.
The company has been in the welding industry since 1942, specializing in fabricating custom tanks, pressure vessels for industrial and ammonia refrigeration, and piping for commercial and industrial construction. It has built a reputation for quality work while consistently delivering products faster than typical market lead times.
That standard recently got put to the test, but President Jeff Yurtin and his management team arent people used to resting on their laurels. Rather, theyre normally on the hunt for new ways to clear the next hurdle.
For Yurtin, the issue at hand was scaling labor for projects that can dampen productivity if theyre not managed correctly. To meet that need, he chose to invest in a Novarc Spool Welding Robot (SWR). The machine offers accurate torch control and machine learning algorithms that can detect different features of a workpiece.
The unit was designed specifically for pipes, pressure vessels, and other types of roll-welded workpieces. It features an adaptive controls system to help ensure accurate torch control, and AI/machine learning algorithms to detect weld pool features.
The SWR can integrate smoothly with the production flow and existing manufacturing processes of customers, according to Soroush Karimzadeh, Novarcs co-founder and CEO.
The SWR is designed with a small footprint and a very long reach, enabling it to be adopted in almost any fabrication shop, no matter the layout or various requirements, Karimzadeh said. Its designed to be minimally intrusive to the production flow.
The nature of Joe White Tanks bread-and-butter projects can throw a kink into its work process, however. And that includes persistent labor issues.
Piping projects can require hard starts and stops with little time to ramp your labor up and down, Yurtin said. Hiring and firing welders for jobs was not our idea of success. We pursued growing our business with a long-term mindset. By adding the SWR to our shop floor, we added capacity strategically and avoided many of the negative implications that come from a short-term, job-to-job labor force. And it has a small footprint; we would have had to install four manual weld cells to do the job of the SWR.
The SWR also helps to address the nationwide shortage of skilled welders by helping less-experienced operators produce high-quality welds.
Novarcs machine includes a user interface that has proven easy to learn for operators, regardless of experience level.
Balancing a stable workforce with changing customer and industry demands can be difficult, Yurtin said. Our organizations culture is very important to our management team. So, as we have grown our companys market presence, we have worked to limit high employee turnover.
The benefits of workforce continuity are legion. Not only does it give employees a greater sense of job security, but it also results in a more willing commitment to corporate goals. At a time when fabrication shops across North America are experiencing a shortage of skilled welders, the SWR helped limit the impact of this challenge, Yurtin said.
We used to have a department dedicated to pipe welding, but now we have our SWR operators working with fitters, supporting them, to ramp up efficiency, he said. This has freed up welders to work on other projects in our backlog, shrinking our market lead time and significantly increasing our capacity. The Novarc SWR increased our capacity by 400% without reducing quality.
The SWR accommodates users with a set of requirements for the fit-up process and provides comprehensive training for fitters.
This is another way to ensure the integration of the SWR into our clients manufacturing processes is as smooth as possible, Karimzadeh said.
With a nod to sustaining their strong corporate culture, the companys employees are buying in, according to Yurtin.
Anyone thats been in the welding business for more than 10 minutes knows that the physical demands are significant, Yurtin said. Welders get tired.
The ergonomics of the SWR are an immediate benefit for the welder, he added. They're still using their hands, but they dont have to wear a hood, and its much easier with the joystick control.
The increased productivity also created an unexpected effect on the shop floor that Yurtin recounted with a smile:
Sometimes its like a game, where the welders see how much they can get through in one day, and were all pumped when we have a super productive day.
With that sort of team reaction, the machine could even be seen as an aid in recruitment.
Its a more attractive place to work, and the younger generation of welders is really excited about automation and working with the SWR, Yurtin said. Even the older workers find the learning curve easy to handle.
Often with automation comes an initial hesitancy, either about using the new technology or the need to make a change that could be perceived as high risk. Yurtin, however, chooses to focus on the ROI.
Quick payback, he said. As we are able to operate four times faster, we have been able to take on more work. We would need four weld cells previously to deliver the same capacity as one SWR. And the SWR takes 25% to 30% less space. The SWR has increased our ability to accept jobs with shorter lead times, win more projects, and pursue larger bids.
At the end of the day, safety always comes first for Karimzadeh.
Novarc cobots are designed to follow the standard for collaborative robots and collaborative robot applications, governed by the ISO 15066 standard, so the cobot is basically equipped with force- and speed-limiting sensors to ensure that if there is a safety event, it can safely stop the work, Karimzadeh said. In addition, the health hazards for welders are significantly reduced, as the welding torch is moved by the cobot, and welders are not exposed to weld fumes and arc light.
As helpful as those benefits are, the one that stands out for Yurtin is quality.
We are mainly using the SWR to weld pipe for pressure vessels, industrial refrigeration, ammonia refrigerationbasically pipe for industrial applications, Yurtin noted. These need to be ASME-quality, X-ray-quality welds. And the SWR, besides being super easy to operate, has increased the quality and consistency of the welds. The SWR lays the root pass itself, and the penetration is perfect from root to cap. The SWR can handle it all. And it always passes X-ray inspection.
Yurtin also credits the SWR for helping to position Joe White Tank as a future-friendly welding shop.
Were excited to be a showcase for innovation and believe the manufacturing industry needs to adopt new technology to be successful and meet increasing demands for productivity and competitive bidding, he said. Our clients are really impressed by the technology of the collaborative robot in our shop, not to mention the quality, productivity, output, and efficiency.
Karimzadeh added, The end users of pipe spools are pushing harder and harder regarding project delivery timelines, cost of production, and quality of welds. This is ultimately pushing the industry to automate. Its the only way to meet the timelines, manage the cost, and maintain the quality of the work.
For Joe White Tank, the search for new solutions to welding challenges is a constant quest for answers that improve its product, its work environment, and, ultimately, its bottom line while reflecting positively on its reputation in the industry.
The rest is here:
Pipe welding integrates machine learning to boost production - TheFabricator.com
- How Humans Could Soon Understand and Talk to Animals, Thanks to Machine Learning - SYFY - November 10th, 2025 [November 10th, 2025]
- Machine learning based analysis of diesel engine performance using FeO nanoadditive in sterculia foetida biodiesel blend - Nature - November 10th, 2025 [November 10th, 2025]
- Machine Learning in Maternal Care - Johns Hopkins Bloomberg School of Public Health - November 10th, 2025 [November 10th, 2025]
- Machine learning-based differentiation of benign and malignant adrenal lesions using 18F-FDG PET/CT: a two-stage classification and SHAP... - November 10th, 2025 [November 10th, 2025]
- How to Better Use AI and Machine Learning in Dermatology, With Renata Block, MMS, PA-C - HCPLive - November 10th, 2025 [November 10th, 2025]
- Avoiding Catastrophe: The Importance of Privacy when Leveraging AI and Machine Learning for Disaster Management - CSIS | Center for Strategic and... - November 10th, 2025 [November 10th, 2025]
- Efferocytosis-related signatures identified via Single-cell analysis and machine learning predict TNBC outcomes and immunotherapy response - Nature - November 10th, 2025 [November 10th, 2025]
- Arc Raiders' use of AI highlights the tension and confusion over where machine learning ends and generative AI begins - PC Gamer - November 3rd, 2025 [November 3rd, 2025]
- From performance to prediction: extracting aging data from the effects of base load aging on washing machines for a machine learning model - Nature - November 3rd, 2025 [November 3rd, 2025]
- Meet 'kvcached': A Machine Learning Library to Enable Virtualized, Elastic KV Cache for LLM Serving on Shared GPUs - MarkTechPost - October 28th, 2025 [October 28th, 2025]
- Bayesian-optimized machine learning boosts actual evapotranspiration prediction in water-stressed agricultural regions of China - Nature - October 28th, 2025 [October 28th, 2025]
- Using machine learning to shed light on how well the triage systems work - News-Medical - October 28th, 2025 [October 28th, 2025]
- Our Last Hope Before The AI Bubble Detonates: Taming LLMs - Machine Learning Week US - October 28th, 2025 [October 28th, 2025]
- Using multiple machine learning algorithms to predict spinal cord injury in patients with cervical spondylosis: a multicenter study - Nature - October 28th, 2025 [October 28th, 2025]
- The diagnostic potential of proteomics and machine learning in Lyme neuroborreliosis - Nature - October 28th, 2025 [October 28th, 2025]
- Using unsupervised machine learning methods to cluster cardio-metabolic profile of the middle-aged and elderly Chinese with general and central... - October 28th, 2025 [October 28th, 2025]
- The prognostic value of POD24 for multiple myeloma: a comprehensive analysis based on traditional statistics and machine learning - BMC Cancer - October 28th, 2025 [October 28th, 2025]
- Reducing inequalities using an unbiased machine learning approach to identify births with the highest risk of preventable neonatal deaths - Population... - October 28th, 2025 [October 28th, 2025]
- Association between SHR and mortality in critically ill patients with CVD: a retrospective analysis and machine learning approach - Diabetology &... - October 28th, 2025 [October 28th, 2025]
- AI-Powered Visual Storytelling: How Machine Learning Transforms Creative Content Production - About Chromebooks - October 28th, 2025 [October 28th, 2025]
- How beauty brand Shiseido nearly tripled revenue per user with machine learning - Performance Marketing World - October 28th, 2025 [October 28th, 2025]
- Magnite introduces machine learning-powered ad podding for streaming platforms - PPC Land - October 26th, 2025 [October 26th, 2025]
- Krafton is an AI first company and will invest 70M USD on machine learning - Female First - October 26th, 2025 [October 26th, 2025]
- Machine learning prediction of bacterial optimal growth temperature from protein domain signatures reveals thermoadaptation mechanisms - BMC Genomics - October 24th, 2025 [October 24th, 2025]
- Data Proportionality and Its Impact on Machine Learning Predictions of Ground Granulated Blast Furnace Slag Concrete Strength | Newswise - Newswise - October 24th, 2025 [October 24th, 2025]
- The Evolution of Machine Learning and Its Applications in Orthopaedics: A Bibliometric Analysis - Cureus - October 24th, 2025 [October 24th, 2025]
- Sentiment Analysis with Machine Learning Achieves 83.48% Accuracy in Predicting Consumer Behavior Trends - Quantum Zeitgeist - October 24th, 2025 [October 24th, 2025]
- Use of machine learning for risk stratification of chest pain patients in the emergency department - BMC Medical Informatics and Decision Making - October 24th, 2025 [October 24th, 2025]
- Mass spectrometry combined with machine learning identifies novel protein signatures as demonstrated with multisystem inflammatory syndrome in... - October 24th, 2025 [October 24th, 2025]
- How Machine Learning Is Shrinking to Fit the Sensor Node - All About Circuits - October 24th, 2025 [October 24th, 2025]
- Machine learning models for mechanical properties prediction of basalt fiber-reinforced concrete incorporating graphical user interface - Nature - October 24th, 2025 [October 24th, 2025]
- Ohio wins national cybersecurity award for fraud solutions using machine learning - Spectrum News NY1 - October 24th, 2025 [October 24th, 2025]
- Itron Partners with Gordian Technologies to Enhance Grid Edge Intelligence with AI and Machine Learning Solutions - Quiver Quantitative - October 24th, 2025 [October 24th, 2025]
- Wearable sensors and machine learning give leg up on better running data - Medical Xpress - October 23rd, 2025 [October 23rd, 2025]
- Geophysical-machine learning tool developed for continuous subsurface geomaterials characterization - Phys.org - October 23rd, 2025 [October 23rd, 2025]
- Ohio wins national cybersecurity award for fraud solutions using machine learning - Spectrum News 1 - October 23rd, 2025 [October 23rd, 2025]
- Machine learning predictions of climate change effects on nearly threatened bird species ( Crithagra xantholaema) habitat in Ethiopia for conservation... - October 23rd, 2025 [October 23rd, 2025]
- A machine learning tool for predicting newly diagnosed osteoporosis in primary healthcare in the Stockholm Region - Nature - October 23rd, 2025 [October 23rd, 2025]
- ECBs New Perspective on Machine Learning in Banking - KPMG - October 23rd, 2025 [October 23rd, 2025]
- Ensemble Machine Learning for Digital Mapping of Soil pH and Electrical Conductivity in the Andean Agroecosystem of Peru - Frontiers - October 21st, 2025 [October 21st, 2025]
- New UA research develops machine learning to address needs of children with autism - AZPM News - October 21st, 2025 [October 21st, 2025]
- NMDSI Speaker Series on Weather Forecasting: What Machine Learning Can and Can't Do, Oct. 23 - Marquette Today - October 21st, 2025 [October 21st, 2025]
- Polyskill Achieves 1.7x Improved Skill Reuse and 9.4% Higher Success Rates through Polymorphic Abstraction in Machine Learning - Quantum Zeitgeist - October 21st, 2025 [October 21st, 2025]
- University of Strathclyde opens admission for MSc in Machine & Deep Learning for Jan 2026 intake - The Indian Express - October 21st, 2025 [October 21st, 2025]
- Reducing Model Biases with Machine Learning Corrections Derived from Ocean Data Assimilation Increments - ESS Open Archive - October 19th, 2025 [October 19th, 2025]
- Unlocking Obesity: Multi-Omics and Machine Learning Insights - Bioengineer.org - October 19th, 2025 [October 19th, 2025]
- Lockheed Martin advances PAC-3 MSE interceptor using artificial intelligence and machine learning - Defence Industry Europe - October 19th, 2025 [October 19th, 2025]
- Semi-automated surveillance of surgical site infections using machine learning and rule-based classification models - Nature - October 19th, 2025 [October 19th, 2025]
- AI and Machine Learning - City of San Jos to release RFP for generative AI platform - Smart Cities World - October 19th, 2025 [October 19th, 2025]
- Machine learning helps identify 'thermal switch' for next-generation nanomaterials - Phys.org - October 17th, 2025 [October 17th, 2025]
- Machine Learning Makes Wildlife Data Analysis Less of a Trek - Maryland.gov - October 17th, 2025 [October 17th, 2025]
- An interpretable multimodal machine learning model for predicting malignancy of thyroid nodules in low-resource scenarios - BMC Endocrine Disorders - October 17th, 2025 [October 17th, 2025]
- In First-Episode Psychosis Patients, Machine Learning Predicted Illness Trajectories to Potentially Improve Outcomes - Brain and Behavior Research - October 17th, 2025 [October 17th, 2025]
- Novel Machine Learning Model Improves MASLD Detection in Type 2 Diabetes - The American Journal of Managed Care (AJMC) - October 17th, 2025 [October 17th, 2025]
- Hybrid machine learning models for predicting the tensile strength of reinforced concrete incorporating nano-engineered and sustainable supplementary... - October 17th, 2025 [October 17th, 2025]
- Modelling of immune infiltration in prostate cancer treated with HDR-brachytherapy using Raman spectroscopy and machine learning - Nature - October 17th, 2025 [October 17th, 2025]
- Association between atherogenic index of plasma and sepsis in critically ill patients with ischemic stroke: a retrospective cohort study using... - October 17th, 2025 [October 17th, 2025]
- AI enters the nuclear age: Pentagon modernizes warheads with machine learning - Washington Times - October 17th, 2025 [October 17th, 2025]
- AI and Machine Learning - Bentley Systems shares its vision for trustworthy AI - Smart Cities World - October 17th, 2025 [October 17th, 2025]
- Looking back to move forward: can historical clinical trial data and machine learning drive change in participant recruitment in anticipation of... - October 15th, 2025 [October 15th, 2025]
- Physics-Based Machine Learning Paves the Way for Advanced 3D-Printed Materials - Bioengineer.org - October 15th, 2025 [October 15th, 2025]
- Predicting one-year overall survival in patients with AITL using machine learning algorithms: a multicenter study - Nature - October 15th, 2025 [October 15th, 2025]
- Explainable machine learning models for predicting of protein-energy wasting in patients on maintenance haemodialysis - BMC Nephrology - October 15th, 2025 [October 15th, 2025]
- Feasibility of machine learning analysis for the identification of patients with possible primary ciliary dyskinesia - Orphanet Journal of Rare... - October 15th, 2025 [October 15th, 2025]
- Machine learning-based prediction of preeclampsia using first-trimester inflammatory markers and red blood cell indices - BMC Pregnancy and Childbirth - October 15th, 2025 [October 15th, 2025]
- Utilizing AI and machine learning to improve railroad safety: Detecting trespasser hotspots - masstransitmag.com - October 15th, 2025 [October 15th, 2025]
- Precision medicine meets machine learning: AI and oncology biomarkers - pharmaphorum - October 15th, 2025 [October 15th, 2025]
- Aether Pro Exchange Transforms Execution Dynamics with Machine-Learning Optimization - GlobeNewswire - October 15th, 2025 [October 15th, 2025]
- Prevalence, associated factors, and machine learning-based prediction of depression, anxiety, and stress among university students: a cross-sectional... - October 15th, 2025 [October 15th, 2025]
- Artificial Intelligence vs. Machine Learning: Which skills will open better career options in the global - Times of India - October 15th, 2025 [October 15th, 2025]
- Study Reveals Impact of Negative Class Definitions on Machine Learning Accuracy in Immunotherapy - geneonline.com - October 15th, 2025 [October 15th, 2025]
- Muna Al-Khaifi: Detection of Breast Cancer Using Machine Learning and Explainable AI - Oncodaily - October 13th, 2025 [October 13th, 2025]
- Expedia Group Unveils Innovative AI and Machine Learning Solutions to Transform Partner Travel Experiences - Travel And Tour World - October 13th, 2025 [October 13th, 2025]
- Machine Learning-Guided Prediction of Formulation Performance in Inhalable CiprofloxacinBile Acid Dispersions with Antimicrobial and Toxicity... - October 13th, 2025 [October 13th, 2025]
- Machine Learning and BIG DATA workshop planned Oct. 14-15 - West Virginia University - October 11th, 2025 [October 11th, 2025]
- How Google enables third-party circularity by increasing recycling rates with Machine Learning - The World Business Council for Sustainable... - October 11th, 2025 [October 11th, 2025]
- Integrating Artificial Intelligence and Machine Learning in Hydroclimatic Research - A Promising Step Forward - University of Northern British... - October 11th, 2025 [October 11th, 2025]
- Semi-automatic detection of anteriorly displaced temporomandibular joint discs in magnetic resonance images using machine learning - BMC Oral Health - October 11th, 2025 [October 11th, 2025]
- AI and Machine Learning - Partnership to bring infrastructure intelligence to US public sector - Smart Cities World - October 11th, 2025 [October 11th, 2025]
- Between rain and snow, machine learning finds nine precipitation types - Phys.org - October 9th, 2025 [October 9th, 2025]