Keith Worden’s research while affiliated with The University of Sheffield and other places

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Publications (366)


On the influence of attributes for assessing similarity and sharing knowledge in heterogeneous populations of structures
  • Article
  • Full-text available

March 2025

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15 Reads

Mechanical Systems and Signal Processing

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Keith Worden
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A graphical model representing the linear mixed model with partial pooling.
An AL heuristic. Source: Bull et al. (2019a).
Schematic showing the experimental set-up used for data acquisition. Source: Wickramarachchi (2019).
Experimental surface roughness measurements.
A graphical model representing the linear mixed model with partial pooling.

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Active learning for regression in engineering populations: a risk-informed approach

February 2025

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46 Reads

Daniel R. Clarkson

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Tina A. Dardeno

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Regression is a fundamental prediction task common in data-centric engineering applications that involves learning mappings between continuous variables. In many engineering applications (e.g., structural health monitoring), feature-label pairs used to learn such mappings are of limited availability, which hinders the effectiveness of traditional supervised machine learning approaches. This paper proposes a methodology for overcoming the issue of data scarcity by combining active learning (AL) for regression with hierarchical Bayesian modeling. AL is an approach for preferentially acquiring feature-label pairs in a resource-efficient manner. In particular, the current work adopts a risk-informed approach that leverages contextual information associated with regression-based engineering decision-making tasks (e.g., inspection and maintenance). Hierarchical Bayesian modeling allow multiple related regression tasks to be learned over a population, capturing local and global effects. The information sharing facilitated by this modeling approach means that information acquired for one engineering system can improve predictive performance across the population. The proposed methodology is demonstrated using an experimental case study. Specifically, multiple regressions are performed over a population of machining tools, where the quantity of interest is the surface roughness of the workpieces. An inspection and maintenance decision process is defined using these regression tasks, which is in turn used to construct the active-learning algorithm. The novel methodology proposed is benchmarked against an uninformed approach to label acquisition and independent modeling of the regression tasks. It is shown that the proposed approach has superior performance in terms of expected cost—maintaining predictive performance while reducing the number of inspections required.


Inter-turbine Modelling of Wind-Farm Power using Multi-task Learning

February 2025

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19 Reads

Because of the global need to increase power production from renewable energy resources, developments in the online monitoring of the associated infrastructure is of interest to reduce operation and maintenance costs. However, challenges exist for data-driven approaches to this problem, such as incomplete or limited histories of labelled damage-state data, operational and environmental variability, or the desire for the quantification of uncertainty to support risk management. This work first introduces a probabilistic regression model for predicting wind-turbine power, which adjusts for wake effects learnt from data. Spatial correlations in the learned model parameters for different tasks (turbines) are then leveraged in a hierarchical Bayesian model (an approach to multi-task learning) to develop a "metamodel", which can be used to make power-predictions which adjust for turbine location - including on previously unobserved turbines not included in the training data. The results show that the metamodel is able to outperform a series of benchmark models, and demonstrates a novel strategy for making efficient use of data for inference in populations of structures, in particular where correlations exist in the variable(s) of interest (such as those from wind-turbine wake-effects).



Regularising NARX models with multi-task learning

January 2025

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25 Reads

A Nonlinear Auto-Regressive with eXogenous inputs (NARX) model can be used to describe time-varying processes; where the output depends on both previous outputs and current/previous external input variables. One limitation of NARX models is their propensity to overfit and result in poor generalisation for future predictions. The proposed method to help to overcome the issue of overfitting is a NARX model which predicts outputs at both the current time and several lead times into the future. This is a form of multi-task learner (MTL); whereby the lead time outputs will regularise the current time output. This work shows that for high noise level, MTL can be used to regularise NARX with a lower Normalised Mean Square Error (NMSE) compared to the NMSE of the independent learner counterpart.




Figure 1: Geodesic flow kernel, adapted from [5].
Figure 3: Heterogeneous transfer approach via intermediate structures.
Model Properties.
Mean prediction accuracy.
When does a bridge become an aeroplane?

November 2024

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59 Reads

Despite recent advances in population-based structural health monitoring (PBSHM), knowledge transfer between highly-disparate structures (i.e., heterogeneous populations) remains a challenge. It has been proposed that heterogeneous transfer may be accomplished via intermediate structures that bridge the gap in information between the structures of interest. A key aspect of the technique is the idea that by varying parameters such as material properties and geometry, one structure can be continuously morphed into another. The current work demonstrates the development of these interpolating structures, via case studies involving the parameterisation of (and transfer between) a simple, simulated 'bridge' and 'aeroplane'. The facetious question 'When is a bridge not an aeroplane?' has been previously asked in the context of predicting positive transfer based on structural similarity. While the obvious answer to this question is 'Always,' the current work demonstrates that in some cases positive transfer can be achieved between highly-disparate systems.


SHM use cases across dimensions that influence decision-making for monitored structures.
Modeling layers required for SHM-aided operation and maintenance planning.
Monitoring-supported value generation for managing structures and infrastructure systems

November 2024

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204 Reads

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1 Citation

To maximize its value, the design, development and implementation of structural health monitoring (SHM) should focus on its role in facilitating decision support. In this position paper, we offer perspectives on the synergy between SHM and decision-making. We propose a classification of SHM use cases aligning with various dimensions that are closely linked to the respective decision contexts. The types of decisions that have to be supported by the SHM system within these settings are discussed along with the corresponding challenges. We provide an overview of different classes of models that are required for integrating SHM in the decision-making process to support the operation and maintenance of structures and infrastructure systems. Fundamental decision-theoretic principles and state-of-the-art methods for optimizing maintenance and operational decision-making under uncertainty are briefly discussed. Finally, we offer a viewpoint on the appropriate course of action for quantifying, validating, and maximizing the added value generated by SHM. This work aspires to synthesize the different perspectives of the SHM, Prognostic Health Management, and reliability communities, and provide directions to researchers and practitioners working towards more pervasive monitoring-based decision-support.


On the topology and geometry of population-based SHM

September 2024

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40 Reads

Population-Based Structural Health Monitoring (PBSHM), aims to leverage information across populations of structures in order to enhance diagnostics on those with sparse data. The discipline of transfer learning provides the mechanism for this capability. One recent paper in PBSHM proposed a geometrical view in which the structures were represented as graphs in a metric "base space" with their data captured in the "total space" of a vector bundle above the graph space. This view was more suggestive than mathematically rigorous, although it did allow certain useful arguments. One bar to more rigorous analysis was the absence of a meaningful topology on the graph space, and thus no useful notion of continuity. The current paper aims to address this problem, by moving to parametric families of structures in the base space, essentially changing points in the graph space to open balls. This allows the definition of open sets in the fibre space and thus allows continuous variation between fibres. The new ideas motivate a new geometrical mechanism for transfer learning in data are transported from one fibre to an adjacent one; i.e., from one structure to another.


Citations (33)


... Subsequently, the Balanced Distribution Adaptation (BDA) algorithm has been implemented for transferring knowledge between two aircraft wings, using transmissibility functions as features [42], and TCA has been validated on an experimental dataset comprising Frequency Response Functions (FRFs) acquired from three different tail planes [43]. Further applications of TCA are detailed in [44], in which this strategy is applied to experimental frame structures, and in [45], where the TCA is combined with an inverse Finite Element methodology (iFEM) to handle measurements from various sources. In addition, a statistic alignment (SA) strategy, already proposed as a pre-processing step in [42], has been exploited as a low-risk form of domain adaptation [46] in a numerical case study, and a real case study involving two monitored bridges. ...

Reference:

On the influence of attributes for assessing similarity and sharing knowledge in heterogeneous populations of structures
On the use of the inverse finite element method to enhance knowledge sharing in population-based structural health monitoring

Computers & Structures

... Currently, a selection of simple geometries (cuboid, sphere, cylinder, I-beam and C-beam) and more complex geometries (trapezoid and oblique cylinder) are available. As development is still ongoing, more geometries are still being added to the builder, with the goal of including all those that appear in [8]. In the case that the desired shape is not available, it is possible to choose the most relevant available shape and then define its geometry as other within the menu. ...

Foundations of population-based SHM, Part V: Network, framework and database
  • Citing Article
  • January 2025

Mechanical Systems and Signal Processing

... Whereas the first two tasks can be treated equally effectively using purely data-driven [6][7][8], as well as model-based SHM approaches [9][10][11], a case can be made that for prognostic applications, which feature prominently in the predictive maintenance approach to O&M, model-based methods are oftentimes better suited [12]. The reason lies in the inherent inability of data-driven models to extrapolate beyond their training horizon, which hampers their ability to provide predictions on the evolution of structural deterioration and thus make the transition from diagnosis to prognosis [5]. ...

Monitoring-supported value generation for managing structures and infrastructure systems

... Heterogeneous populations distinctly require a phase of similarity assessment to limit the risk of negative transfer [33], the phenomenon occurring when the knowledge shared from a source structure lowers the diagnostic performance on the target structure. Different approaches have been proposed for assessing similarity in heterogeneous populations and to determine the value of knowledge transfer [34,35], and a novel possibility in this field adopts the available mode shapes to measure the similarity between source and target structures employing the modal assurance criterion, as shown in [36]. Afterwards, if the systems are defined sufficiently similar, their features can be involved in knowledge sharing. ...

On the Influence of Attributes for Assessing Similarity and Sharing Knowledge in Heterogeneous Populations of Structures
  • Citing Preprint
  • January 2024

... Therefore, the canonical-correlation-based fast feature selection is carried out to find out the significant model terms from m k=1 x i k (k) with y(k) as the target. Refer to [20] for details on the specific feature selection steps. ...

Canonical-correlation-based fast feature selection for structural health monitoring
  • Citing Article
  • September 2024

Mechanical Systems and Signal Processing

... By representing structures as attributed graphs, similarity of structures can be measured. 2,12 The converse hypothesis to the aforementioned 'similarity in structure implies similarity in data', is 'similarity in data implies similarity in structure', 13 and the wish in PBSHM is to enable assessment of similarity in both cases (and eventually simultaneously). In this paper, the focus is on measuring similarity of monitoring data and descriptive features collected from structures. ...

Similarity assessment of structures for population-based structural health monitoring via graph kernels
  • Citing Article
  • August 2024

... For instance, although bridges are often unique, they can be categorized into broader typologies, such as truss or girder bridges. This approach is embodied in the recently introduced concept of Population-Based Structural Health Monitoring (PBSHM) (Bunce et al., 2024;Gosliga et al., 2022;Tsialiamanis et al., 2023Tsialiamanis et al., , 2024. ...

On population-based structural health monitoring for bridges: Comparing similarity metrics and dynamic responses between sets of bridges
  • Citing Article
  • July 2024

Mechanical Systems and Signal Processing

... The necessity for quantitative methodologies for global damage detection applicable to complex structures has driven the development and ongoing research of tools that identify damage through non-destructive testing (NDT). The concept of Structural health monitoring (SHM) was developed to ensure the safety and reliability of engineering structures, taking into account different perception levels (Delo et al., 2024). By extracting, processing, and monitoring features related to their mechanical behavior, SHM provides a diagnosis of the state of the material, structural elements, and the structure as a whole (Amaral, 2022). ...

Novelty detection across a small population of real structures: A negative selection approach

Journal of Physics Conference Series

... In either case, a single input has been imposed using a shaker connected to the rear part of the fuselage, and a suspension system has been used to simulate free vibration conditions. For a more comprehensive description of the performed strain EMA, the reader is directed to [51]. condition and six different damaged conditions, which have been acquired at ambient temperature. ...

Using the inverse finite‐element method to harmonise classical modal analysis with fibre‐optic strain data for robust population‐based structural health monitoring

Strain

... Gardner et al. proposed the application of domain adaptation for PBSHM [35], implementing the Transfer Component analysis (TCA), the Joint Distribution Adaptation (JDA), and the Adaptation regularisation-based transfer learning for damped natural frequencies and damping ratios of numerical and experimental laboratory-scale three-storey structures. Some applications of unsupervised transfer learning have been proposed in the context of bridge monitoring, as shown in [36][37][38], and for anomaly detection in electric motor bearings and jet engines by exploiting adversarial deep learning [39]. Moreover, domain adaptation has been introduced for guided wave SHM [40], and Zhou et al. proposed a fuzzy-set-based joint distribution adaptation for improving damage quantification on a helicopter panel [41]. ...

A domain adaptation approach to damage classification with an application to bridge monitoring

Mechanical Systems and Signal Processing