Artificial Intelligence for the Online Prediction of the Cool-down Time in a Subsea Pipeline After an Unplanned Shutdown

2021 ◽  
Author(s):  
Alberto Gerri ◽  
Ahmed Shokry ◽  
Enrico Zio ◽  
Marco Montini

Abstract Hydrates formation in subsea pipelines is one of the main reliability concerns for flow assurance engineers. A fast and reliable assessment of the Cool-Down Time (CDT), the period between a shut-down event and possible hydrates formation in the asset, is of key importance for the safety of operations. Existing methods for the CDT prediction are highly dependent on the use of very complex physics-based models that demand large computational time, which hinders their usage in an online environment. Therefore, this work presents a novel methodology for the development of surrogate models that predict, in a fast and accurate way, the CDT in subsea pipelines after unplanned shutdowns. The proposed methodology is, innovatively, tailored on the basis of reliability perspective, by treating the CDT as a risk index, where a critic CDT threshold (i.e. the minimum time needed by the operator to preserve the line from hydrates formation) is considered to distinguish the simulation outputs into high-risk and low-risk domains. The methodology relies on the development of a hybrid Machine Learning (ML) based model using datasets generated through complex physics-based model’ simulations. The hybrid ML-based model consists of a Support Vector Machine (SVM) classifier that assigns a risk level (high or low) to the measured operating condition of the asset, and two Artificial Neural Networks (ANNs) for predicting the CDT at the high-risk (low CDT) or the low-risk (high CDT) operating conditions previously assigned by the classifier. The effectiveness of the proposed methodology is validated by its application to a case study involving a pipeline in an offshore western African asset, modelled by a transient physics-based commercial software. The results show outperformance of the capabilities of the proposed hybrid ML-based model (i.e., SVM + 2 ANNs) compared to the classical approach (i.e. modelling the entire system with one global ANN) in terms of enhancing the prediction of the CDT during the high-risk conditions of the asset. This behaviour is confirmed applying the novel methodology to training datasets of different size. In fact, the high-risk Normalized Root Mean Square Error (NRMSE) is reduced on average of 15% compared to the NRMSE of a global ANN model. Moreover, it’s shown that high-risk CDT are better predicted by the hybrid model even if the critic CDT, which divides the simulation outputs in high-risk and low-risk values (i.e. the minimum time needed by the operator to preserve the line from hydrates formation), changes. The enhancement, in this case, is on average of 14.6%. Eventually, results show how the novel methodology cuts down by more than one hundred seventy-eight times the computational times for online CDT predictions compared to the physics-based model.

Author(s):  
S. Tejaswini ◽  
N. Sriraam ◽  
Pradeep G. C. M.

Infant cries are referred as the biological indicator where infant distress is expressed without any external stimulus. One can assess the physiological changes through cry characteristics that help in improving clinical decision. In a typical Neonatal Intensive Care Unit (NICU), recognizing high-risk and low-risk admitted preterm neonates is quite challenging and complex in nature. This chapter attempts to develop pattern recognition-based approach to identify high-risk and low-risk preterm neonates in NICU. Four clinical conditions were considered: two Low Risk (LR) and two High Risk (HR), LR1- Appropriate Gestational Age (AGA), LR2- Intrauterine Growth Restriction (IUGR), HR1-Respiratory Distress Syndrome (RDS), and HR2- Premature Rupture of Membranes (PROM). An overall cry unit of 800 (n=20 per condition) was used for the proposed study. After appropriate pre-processing, Bark Frequency Cepstral Coefficient (BFCC) was estimated using three methods. Schroeder, Zwicker and Terhardt; and Transmiller; and a non-linear Support Vector Machine (SVM) Classifier were employed to discriminate low-risk and high-risk groups. From the simulation results, it was observed that sensitivity specificity and accuracy of 91.47%, 91.42%, and 92.9% respectively were obtained using the BFCC estimated for classifying high risk and low risk with SVM classification.


2021 ◽  
Vol 7 ◽  
pp. e680
Author(s):  
Muhammad Amirul Abdullah ◽  
Muhammad Ar Rahim Ibrahim ◽  
Muhammad Nur Aiman Shapiee ◽  
Muhammad Aizzat Zakaria ◽  
Mohd Azraai Mohd Razman ◽  
...  

This study aims at classifying flat ground tricks, namely Ollie, Kickflip, Shove-it, Nollie and Frontside 180, through the identification of significant input image transformation on different transfer learning models with optimized Support Vector Machine (SVM) classifier. A total of six amateur skateboarders (20 ± 7 years of age with at least 5.0 years of experience) executed five tricks for each type of trick repeatedly on a customized ORY skateboard (IMU sensor fused) on a cemented ground. From the IMU data, a total of six raw signals extracted. A total of two input image type, namely raw data (RAW) and Continous Wavelet Transform (CWT), as well as six transfer learning models from three different families along with grid-searched optimized SVM, were investigated towards its efficacy in classifying the skateboarding tricks. It was shown from the study that RAW and CWT input images on MobileNet, MobileNetV2 and ResNet101 transfer learning models demonstrated the best test accuracy at 100% on the test dataset. Nonetheless, by evaluating the computational time amongst the best models, it was established that the CWT-MobileNet-Optimized SVM pipeline was found to be the best. It could be concluded that the proposed method is able to facilitate the judges as well as coaches in identifying skateboarding tricks execution.


Author(s):  
Muhamad Bob Anthony

PT. RK is one of the major international steel producing companies. This study aims to determine the potential hazards and the value of the level of risk that is likely to occur in the new plant owned by PT. RK i.e. the gas cleaning system area which is currently in the process of entering 95% progress. This study uses the Hazard & Operability Study (HAZOPs) method in analyzing risks in the gas cleaning system area of PT. RK. The Hazard & Operability Study (HAZOPs) method was used in this study because this method is very suitable for a new plant to be used. Based on the identification of potential hazards and risk analysis that has been done in the area of gas cleaning system using the HAZOPs method, it was found that 11 deviations that might occur from all existing nodes, i.e. for extreme risk levels of 1 (one) deviation or 9%, level high risk of 2 (two) deviations or 18%, moderate risk level of 6 (six) deviations or 55% and low risk level of 2 (two) deviations or 18%.Keyword : Gas Cleaning System, HAZOPs, Potential of Hazard, Risk Levels PT. RK merupakan salah satu perusahaan manufaktur besar penghasil baja berskala internasional. Penelitian ini bertujuan untuk mengetahui potensi bahaya dan nilai level risiko yang kemungkinan terjadi di plant baru milik PT. RK yaitu area gas cleaning system yang saat ini proses pekerjaannya sudah memasuki progress 95%. Penelitian ini menggunakan metode Hazard & Operability Study (HAZOPs) dalam menganalisa risiko di area gas cleaning system  PT. RK.  Metode Hazard & Operability Study (HAZOPs) digunakan dalam penelitian ini dikarenakan metode ini sangat cocok untuk sebuah plant baru yang akan digunakan. Berdasarkan identifikasi potensi bahaya dan analisa risiko yang telah dilakukan di area gas cleaning system dengan menggunakan metode HAZOPs, didapatkan bahwa 11 penyimpangan yang kemungkinan terjadi dari semua node yang ada yaitu untuk level risiko extreme sebanyak 1 (satu) penyimpangan atau sebesar 9%, level risiko high risk sebanyak 2 (dua) penyimpangan atau sebesar 18%, level risiko moderate sebanyak 6 (enam) penyimpangan atau sebesar 55% dan level risiko low risk sebanyak 2 (dua) penyimpangan atau sebesar 18%.Kata Kunci: Gas Cleaning System, HAZOPs, Level Risiko, Potensi Bahaya


e-CliniC ◽  
2017 ◽  
Vol 5 (2) ◽  
Author(s):  
Engelin E. Emor ◽  
Agnes L. Panda ◽  
Janry Pangemanan

Abstract: Atherosclerotic cardiovascular disease is caused by the accumulation of plaque on the artery wall causing dysfunction of anatomical and hemodynamic system of the heart and blood flow. There are many risk factors that cause atherosclerotic cardiovascular disease which are divided into modifiable and unmodifiable risk factors. Prevention of this disease can be achieved with early detection, such as prediction the risk level of 10 years ahead of atherosclerotic cardiovascular disease by using the Framingham Risk Score (FRS). This study was aimed to obtain the risk level of atherosclerotic cardiovascular disease in patients at Internal Medicine Polyclinic of Prof. Dr. R. D. Kandou Hospital Manado by using their medical records from September to October 2017. This was a descriptive study with a cross sectional design. There were 100 samples obtained by using conclusive sampling technique. Of the 100 patients, 42 (42%) patients had low risk, 27 (27%) patients had moderate risk, and 31 (31%) patients had high risk of atherosclerotic cardiovascular disease in 10 years ahead. Conclusion: In this study, the highest percentage was in patients with low risk, followed by patients with high risk, and moderate risk.Keywords: ASCVD, Framingham Risk Score, Risk of atherosclerotic cardiovascular sisease. Abstrak: Penyakit kardiovaskuler aterosklerotik adalah penyakit yang disebabkan oleh adanya timbunan plak pada dinding arteri sehingga menyebabkan gangguan fungsional, anatomis serta sistem hemodinamis jantung dan pembuluh darah. Terdapat banyak faktor risiko yang menyebabkan terjadinya penyakit kardiovaskuler aterosklerotik yang dibagi menjadi faktor risiko yang dapat dimodifikasi dan yang tidak dapat dimodifikasi. Pencegahan penyakit ini dapat dilakukan dengan deteksi dini, salah satunya yaitu dengan memrediksi tingkat risiko 10 tahun kedepan terjadinya penyakit kardiovaskuler aterosklerotik dengan menggunakan Framingham Risk Score. Penelitian ini bertujuan untuk mengetahui tingkat risiko penyakit kardiovaskuler ateroskerotik pada pasien di Poliklinik Penyakit Dalam RSUP Prof. Dr. R. D. Kandou Manado. Jenis penelitian ialah deskriptif dengan desain potong lintang menggunakan data rekam medik pasien Poliklinik Penyakit Dalam RSUP Prof. Dr. R. D. Kandou Manado periode September - Oktober 2017. Sampel penelitian berjumlah 100 orang dengan teknik pengambilan conclusive sampling. Terdapat 42 pasien (42%) dengan tingkat risiko rendah, 27 pasien (27%) dengan risiko sedang, dan 31 pasien (31%) dengan risiko tinggi terkena penyakit kardiovaskuler aterosklerotik 10 tahun kedepan. Simpulan: Pada studi ini, persentase tertinggi ialah pasien dengan tingkat risiko rendah terjadinya penyakit kardiovaskuler aterosklerotik, diikuti tingkat risiko tinggi dan risiko sedang.Kata kunci: ASCVD, Framingham Risk Score, tingkat risiko penyakit kardiovaskuler aterosklerotik


Energies ◽  
2021 ◽  
Vol 14 (18) ◽  
pp. 6000
Author(s):  
Ahmed Shokry ◽  
Piero Baraldi ◽  
Andrea Castellano ◽  
Luigi Serio ◽  
Enrico Zio

This work proposes a data-driven methodology for identifying critical components in Complex Technical Infrastructures (CTIs), for which the functional logic and/or the system structure functions are not known due the CTI’s complexity and evolving nature. The methodology uses large amounts of CTI monitoring data acquired over long periods of time and under different operating conditions. The critical components are identified as those for which the condition monitoring signals permit the optimal classification of the CTI functioning or failed state. The methodology includes two stages: in the first stage, a feature selection filter method based on the Relief technique is used to rank the monitoring signals according to their importance with respect to the CTI functioning or failed state; the second stage identifies the subset of signals among those highlighted by the Relief technique that are most informative with respect to the CTI state. This identification is performed on the basis of evaluating the performance of a Cost-Sensitive Support Vector Machine (CS-SVM) classifier trained with several subsets of the candidate signals. The capabilities of the methodology proposed are assessed through its application to different benchmarks of highly imbalanced datasets, showing performances that are competitive to those obtained by other methods presented in the literature. The methodology is finally applied to the monitoring signals of the Large Hadron Collider (LHC) of the European Organization for Nuclear Research (CERN), a CTI for experiments of physics; the criticality of the identified components has been confirmed by CERN experts.


2020 ◽  
Vol 12 (1) ◽  
pp. 10
Author(s):  
Chunheng Zhao ◽  
Yi Li ◽  
Matthew Wessner ◽  
Chinmay Rathod ◽  
Pierluigi Pisu

Permanent magnet synchronous motor (PMSM) is a leading technology for electric vehicles (EVs) and other high-performance industrial applications. These challenging applications demand robust fault diagnosis schemes, but conventional strategies based on models, system knowledge, and signal transformation have limitations that degrade the agility of diagnosing faults. These methods require extremely detailed design and consideration to remain robust against noise and disturbances in the actual application. Recent advancements in artificial intelligence and machine learning have proven to be promising next-generation solutions for fault diagnosis. In this paper, a support-vector machine (SVM) utilizing sparse representation is developed to perform sensor fault diagnosis of a PMSM. A simulation model of the pertinent PMSM drive system for automotive applications is used to generate a set of labelled training example sets that the SVM uses to determine margins between normal and faulty operating conditions. The PMSM model includes input as a torque reference profile and disturbance as a constant road grade, against both of which faults must be detectable. Even with limited training, the SVM classifier developed in this paper is capable of diagnosing faults with a high degree of accuracy, suggesting that such methods are feasible for the demanding fault diagnosis challenge in PMSM.


2020 ◽  
Author(s):  
Hui Li ◽  
Hao Zeng ◽  
Linyan Chen ◽  
Qimeng Liao ◽  
Jianrui Ji ◽  
...  

Abstract Background: Colon adenocarcinoma (COAD) is one of the highest morbidity cancers all over the world. Its 5-year survival is no more than 60% even in European countries with the highest survival rates. The histopathological information is crucial for the prognosis and therapy of COAD. Application of the digital whole slide imaging system enables us to read histopathological sections digitally. Apart from that, cancer genomics is also an important prognostic factor.Methods: To identify prognosis biomarkers of COAD, we downloaded whole-slide histopathological images from TCIA database. After processing these images, histopathological features were extracted by CellProfiler. Least Absolute Shrinkage and Selection Operator and Support Vector Machine Recursive Feature Elimination were followed applied, screening out 5 prognosis-related features. Weighted gene co-expression network analysis (WGCNA) was operated to find co-expression gene module correlated with prognosis-related features. The samples were divided into a training set and a testing set on a scale of 70% and 30%. Random forest was applied to construct histopathologic-genomic prognosis factor (HGPF) using prognosis-related features and genomic data. After that, we combined HGPF and clinical characteristics with nomogram and verify its predictive efficacy.Results: The time-dependent ROC was drawn to evaluate the efficacy of prognostic model. In the training set, 1-year, 3-year and 5-year AUCs are respectively 0.948, 0.916, 0.933. In the testing set, 1-year, 3-year and 5-year AUCs are respectively 0.913, 0.894, 0.924. In addition, patients were separated into high-risk survival group and low-risk survival group by HGPF. Survival analysis indicates that the low-risk patients’ survival was significantly better than high-risk patients’ in both training set and testing set. It is suggested that histopathological image features have certain ability to predict COAD survival, which can be further improved by means of multi-omics combination.Conclusions: In conclusion, this study constructs an integrative prognosis model based on histopathological and genomic features, which may have some guidance effect on prognosis and clinical decision of COAD patients. Furthermore, the underlying biological mechanisms of this multi-omics model require further study.


2021 ◽  
Author(s):  
Caidong Liu ◽  
Ziyu Wang ◽  
Wei Wu ◽  
Changgang Xiang ◽  
Lingxiang Wu ◽  
...  

Abstract Objectives: To classify COVID-19 patients into low-risk and high-risk at admission by laboratory indicators.Design, Setting, and Patients: This is a case series of patients from a China healthcare system in Wuhan. In this retrospective cohort, 3563 patients confirmed COVID-19 pneumonia, including 548 patients in the training dataset, and 3015 patients in the testing dataset.Interventions: NoneMeasurements and Main Results:We first identified the significant laboratory indicators related to the severity of COVID-19 in the training dataset. Neutrophils percentage, lymphocytes percentage, creatinine, and blood urea nitrogen with AUC greater than 0.7 were included in the model. These indicators were further used to build a support vector machine model to classify patients into low-risk and high-risk at admission. Results showed that this model could stratify the patients in the testing dataset effectively (AUC=0.89). Moreover, laboratory indicators detected in the first week after admission were able to estimate the probability of death (AUC=0.95). Besides, we could diagnose COVID-19 and differentiated it from other kinds of viral pneumonia based on laboratory indicators (accuracy=0.97).Conclusions:Our risk-stratification model based on laboratory indicators could help to diagnose, monitor, and predict severity at an early stage of COVID-19.


2015 ◽  
Vol 33 (7_suppl) ◽  
pp. 68-68 ◽  
Author(s):  
Phuoc T. Tran ◽  
Amol Narang ◽  
Ashwin Ram ◽  
Scott P. Robertson ◽  
Pei He ◽  
...  

68 Background: In patients with localized prostate cancer undergoing radiation therapy (RT) +/- androgen deprivation therapy (ADT), an end of radiation (EOR) PSA obtained during the last week of RT may serve as an early post-treatment predictor of poor outcomes and identify patients in whom to pursue treatment intensification or novel therapies. Methods: We reviewed an IRB-monitored, prospectively acquired database of patients with prostate cancer treated with definitive RT at our institution from 1993-2007 (n=890). Patients with an available EOR PSA were divided into two cohorts and analyzed separately based on inclusion of ADT into the treatment regimen. EOR PSA thresholds of 0.5 ng/mL and 1.0 ng/mL were explored. Multivariate analysis was performed to determine prognostic factors for biochemical failure-free survival (BFFS, Phoenix criteria) and overall survival (OS). Kaplan-Meier survival curves were constructed, with stratification by EOR PSA thresholds. Results: Median age was 69 years, with an even distribution of NCCN low risk (33.5%), intermediate risk (34.0%), and high risk (32.5%) patients. Median RT dose was 7020 cGy, and 54.5% were treated with ADT. Median follow-up of the entire cohort was 11.7 yrs. EOR PSA level was available for the majority of patients (77.5%). On multivariate analysis, EOR PSA >0.5 ng/mL was significantly associated with worse BFFS (p<0.0001) and OS (p<0.0001). In the subset of patients undergoing RT with ADT for NCCN intermediate/high risk disease, 5 yr BFFS was more disparate based an EOR PSA threshold of 0.5 ng/mL (5 yr BFFS: 87.3% vs. 41.1%, p<0.001), than initial NCCN risk level (5 yr BFFS: 88.7% vs. 76.9%, p=0.038). In NCCN low risk patients undergoing definitive RT alone, an EOR PSA threshold of 1.0 ng/mL was significantly prognostic of outcome (5 yr BFFS: 100.0% vs. 88.6%, p=0.024). Conclusions: For NCCN intermediate/high risk patients undergoing RT with ADT, EOR PSA >0.5 ng/mL may represent a better surrogate for poor outcomes than initial risk group. In addition, NCCN low risk patients undergoing RT alone who obtained an EOR PSA ≤1.0 ng/mL experienced excellent BFFS. Prospective evaluation of the utility of EOR PSA should be explored.


2015 ◽  
Vol 282 (1799) ◽  
pp. 20142197 ◽  
Author(s):  
Maud C. O. Ferrari ◽  
Mark I. McCormick ◽  
Mark G. Meekan ◽  
Douglas P. Chivers

Neophobia—the generalized fear response to novel stimuli—provides the first potential strategy that predator-naive prey may use to survive initial predator encounters. This phenotype appears to be highly plastic and present in individuals experiencing high-risk environments, but rarer in those experiencing low-risk environments. Despite the appeal of this strategy as a ‘solution’ for prey naivety, we lack evidence that this strategy provides any fitness benefit to prey. Here, we compare the relative effect of environmental risk (high versus low) and predator-recognition training (predator-naive versus predator-experienced individuals) on the survival of juvenile fish in the wild. We found that juveniles raised in high-risk conditions survived better than those raised in low-risk conditions, providing the first empirical evidence that environmental risk, in the absence of any predator-specific information, affects the way naive prey survive in a novel environment. Both risk level and experience affected survival; however, the two factors did not interact, indicating that the information provided by both factors did not interfere or enhance each other. From a mechanistic viewpoint, this indicates that the combination of the two factors may increase the intensity, and hence efficacy, of prey evasion strategies, or that both factors provide qualitatively separate benefits that would result in an additive survival success.


Sign in / Sign up

Export Citation Format

Share Document