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Machine Learning Applications in Subsurface Energy Resource Management: State of the Art and Future Prognosis - Srikanta Mishra December 27, 2022 PDF  BOOKS
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Machine Learning Applications in Subsurface Energy Resource Management: State of the Art and Future Prognosis
Author: Srikanta Mishra
Year: December 27, 2022
Format: PDF
File size: PDF 21 MB
Language: English



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The Plot: Machine Learning Applications in Subsurface Energy Resource Management State of the Art and Future Prognosis delves into the cutting-edge technology of machine learning (ML) and its applications in managing subsurface energy resources such as oil, gas, geologic carbon sequestration, and geothermal energy. The book provides a comprehensive overview of the current state of the art in ML applications across various domains, including reservoir characterization, drilling, production, reservoir modeling, and predictive maintenance. With contributions from leading experts in the field, this book offers a wealth of knowledge on the latest developments and future prospects for ML in subsurface energy resource management. The book begins by exploring the need to study and understand the process of technological evolution, emphasizing the importance of developing a personal paradigm for perceiving the technological process of modern knowledge development. This is crucial for the survival of humanity and the unity of people in a warring world. The text highlights the significance of adapting to new technologies and embracing their potential to address global challenges. Part I of the book focuses on the fundamentals of ML and its applications in subsurface energy resource management. It covers the basics of ML techniques, including supervised and unsupervised learning, deep learning, and neural networks. This section also delves into the challenges and limitations of ML applications in the field, providing readers with a solid foundation for understanding the technology's potential and limitations. In Part II, the book examines the various application domains of ML in subsurface energy resource management, including reservoir characterization, drilling, production, reservoir modeling, and predictive maintenance.
Приложения машинного обучения в управлении энергетическими ресурсами недр Современный уровень техники и прогноз на будущее углубляются в передовую технологию машинного обучения (ML) и ее приложения в управлении подземными энергетическими ресурсами, такими как нефть, газ, геологическое связывание углерода и геотермальная энергия. В книге представлен всесторонний обзор современного уровня техники в области применения ML в различных областях, включая характеристику пласта, бурение, добычу, моделирование пласта и прогнозное обслуживание. При участии ведущих экспертов в этой области эта книга предлагает богатый опыт по последним разработкам и перспективам ML в области управления подземными энергетическими ресурсами. Книга начинается с исследования необходимости изучения и понимания процесса технологической эволюции, подчёркивая важность выработки личностной парадигмы восприятия технологического процесса развития современных знаний. Это имеет решающее значение для выживания человечества и единства людей в воюющем мире. В тексте подчеркивается важность адаптации к новым технологиям и реализации их потенциала для решения глобальных проблем. Часть I книги посвящена основам МП и его применению в недропользовании. Он охватывает основы методов ML, включая контролируемое и неконтролируемое обучение, глубокое обучение и нейронные сети. В этом разделе также рассматриваются проблемы и ограничения приложений ML в полевых условиях, что дает читателям прочную основу для понимания потенциала и ограничений технологии. В Части II, книга рассматривает различные области применения ML в управлении подземными энергетическими ресурсами, включая характеристику пласта, бурение, добычу, моделирование пласта и прогнозное техническое обслуживание.
Applications de Machine arning dans la gestion des ressources énergétiques du sous-sol L'état actuel de la technique et les perspectives d'avenir sont approfondis dans la technologie avancée de Machine arning (ML) et ses applications dans la gestion des ressources énergétiques souterraines telles que le pétrole, le gaz, la séquestration géologique du carbone et la géothermie. livre présente un aperçu complet de l'état actuel de la technique dans les applications de ML dans divers domaines, y compris la caractérisation de la formation, le forage, la production, la modélisation de la formation et la maintenance prédictive. Avec la participation d'experts de premier plan dans ce domaine, ce livre offre une riche expérience sur les derniers développements et perspectives de ML dans la gestion des ressources énergétiques souterraines. livre commence par une étude de la nécessité d'étudier et de comprendre le processus d'évolution technologique, soulignant l'importance de développer un paradigme personnel de la perception du processus technologique du développement des connaissances modernes. Cela est crucial pour la survie de l'humanité et l'unité des hommes dans un monde en guerre. texte souligne l'importance de s'adapter aux nouvelles technologies et de réaliser leur potentiel pour relever les défis mondiaux. La première partie du livre traite des fondements du PM et de son application dans le sous-sol. Il couvre les bases des méthodes ML, y compris l'apprentissage contrôlé et non contrôlé, l'apprentissage profond et les réseaux neuronaux. Cette section examine également les défis et les limites des applications ML sur le terrain, offrant aux lecteurs une base solide pour comprendre le potentiel et les limites de la technologie. Dans la partie II, le livre traite de divers domaines d'application de la LM dans la gestion des ressources énergétiques souterraines, y compris la caractérisation de la formation, le forage, la production, la modélisation de la formation et la maintenance prédictive.
Aplicaciones de aprendizaje automático en la gestión de los recursos energéticos del subsuelo nivel moderno de la técnica y la previsión para el futuro profundizan en la tecnología avanzada de aprendizaje automático (ML) y sus aplicaciones en la gestión de los recursos energéticos subterráneos como el petróleo, el gas, el secuestro geológico de carbono y la energía geotérmica. libro ofrece una visión general completa del nivel actual de la técnica en la aplicación de ML en una variedad de campos, incluyendo la caracterización de la formación, perforación, extracción, modelado de la formación y mantenimiento predictivo. Con la participación de destacados expertos en la materia, este libro ofrece una amplia experiencia sobre los últimos desarrollos y perspectivas de ML en el ámbito de la gestión de los recursos energéticos subterráneos. libro comienza investigando la necesidad de estudiar y entender el proceso de evolución tecnológica, destacando la importancia de generar un paradigma personal de percepción del proceso tecnológico del desarrollo del conocimiento moderno. Esto es crucial para la supervivencia de la humanidad y la unidad de los seres humanos en un mundo en guerra. texto destaca la importancia de adaptarse a las nuevas tecnologías y aprovechar su potencial para hacer frente a los retos globales. La parte I del libro trata de los fundamentos del MP y su aplicación en el subsuelo. Abarca los fundamentos de las técnicas de ML, incluyendo el aprendizaje controlado e incontrolado, el aprendizaje profundo y las redes neuronales. Esta sección también aborda los desafíos y limitaciones de las aplicaciones de ML en el campo, lo que proporciona a los lectores una base sólida para comprender el potencial y las limitaciones de la tecnología. En la Parte II, el libro aborda los diferentes campos de aplicación del ML en la gestión de los recursos energéticos subterráneos, incluyendo la caracterización del lecho, perforación, extracción, modelado del lecho y mantenimiento predictivo.
Aplicativos de aprendizagem de máquinas no gerenciamento de recursos energéticos do subsolo Os níveis modernos de tecnologia e as previsões para o futuro estão se aprofundando na tecnologia avançada de aprendizagem de máquinas (ML) e suas aplicações no gerenciamento de recursos energéticos subterrâneos, tais como petróleo, gás, ligação geológica de carbono e energia geotérmica. O livro apresenta uma revisão abrangente dos níveis modernos de tecnologia em aplicações de ML em diversas áreas, incluindo caracterização da placa, perfuração, mineração, modelagem da placa e manutenção de previsões. Com a participação de especialistas líderes nesta área, este livro oferece uma vasta experiência sobre os últimos desenvolvimentos e perspectivas da ML em gestão de recursos energéticos subterrâneos. O livro começa com um estudo sobre a necessidade de estudar e compreender o processo de evolução tecnológica, ressaltando a importância de criar um paradigma pessoal de percepção do processo tecnológico de desenvolvimento do conhecimento moderno. Isso é crucial para a sobrevivência da humanidade e para a unidade das pessoas no mundo em guerra. O texto enfatiza a importância da adaptação às novas tecnologias e a realização de seu potencial para lidar com os problemas globais. A parte I do livro trata dos fundamentos da MP e sua aplicação na desapropriação. Ele abrange os fundamentos das técnicas de ML, incluindo treinamento controlado e descontrolado, treinamento profundo e redes neurais. Esta seção também aborda os desafios e limitações dos aplicativos ML no terreno, dando aos leitores uma base sólida para compreender o potencial e as limitações da tecnologia. Na Parte II, o livro aborda várias aplicações da ML no gerenciamento de recursos energéticos subterrâneos, incluindo caracterização plástica, perfuração, mineração, modelagem plástica e manutenção previdenciária.
Applicazioni di apprendimento automatico nella gestione delle risorse energetiche del sottosuolo I moderni livelli di tecnologia e le previsioni per il futuro stanno approfondendo la tecnologia avanzata di apprendimento automatico (ML) e le sue applicazioni nella gestione delle risorse energetiche sotterranee come petrolio, gas, collegamento geologico tra carbonio ed energia geotermica. Il libro fornisce una panoramica completa dell'attuale livello di tecnologia nell'applicazione di ML in diversi ambiti, tra cui la caratterizzazione della plastica, la perforazione, l'estrazione, la simulazione della piastra e la manutenzione predittiva. Con la partecipazione di esperti di primo piano in questo campo, questo libro offre un'ampia esperienza negli ultimi sviluppi e prospettive di gestione delle risorse energetiche sotterranee. Il libro inizia con una ricerca sulla necessità di studiare e comprendere il processo di evoluzione tecnologica, sottolineando l'importanza di sviluppare un paradigma personale per la percezione del processo tecnologico di sviluppo della conoscenza moderna. Questo è fondamentale per la sopravvivenza dell'umanità e dell'unità delle persone nel mondo in guerra. Il testo sottolinea l'importanza di adattarsi alle nuove tecnologie e di realizzare il loro potenziale per affrontare le sfide globali. La Parte I del libro è incentrata sulle basi della MP e sulla sua applicazione nella sottoutilizzazione. Include le basi dei metodi ML, tra cui l'apprendimento controllato e incontrollato, l'apprendimento approfondito e le reti neurali. Questa sezione affronta anche i problemi e le limitazioni delle applicazioni ML sul campo, fornendo ai lettori una base solida per comprendere il potenziale e i limiti della tecnologia. Nella Parte II, il libro affronta diversi ambiti di applicazione della ML nella gestione delle risorse energetiche sotterranee, tra cui la caratterizzazione della plastica, la perforazione, l'estrazione, la simulazione della plastica e la manutenzione predittiva.
Anwendungen des maschinellen rnens im Management der Energieressourcen des Untergrunds Der Stand der Technik und die Zukunftsprognose vertiefen sich in die fortschrittliche Technologie des maschinellen rnens (ML) und ihre Anwendungen im Management unterirdischer Energieressourcen wie Öl, Gas, geologische Kohlenstoffbindung und Geothermie. Das Buch bietet einen umfassenden Überblick über den aktuellen Stand der Technik im Bereich der ML-Anwendungen in einer Vielzahl von Bereichen, darunter Formationscharakterisierung, Bohrungen, Produktion, Formationsmodellierung und Predictive Maintenance. Unter Beteiligung führender Experten auf diesem Gebiet bietet dieses Buch eine Fülle von Erfahrungen mit den neuesten Entwicklungen und Perspektiven von ML im Bereich des Managements unterirdischer Energieressourcen. Das Buch beginnt mit der Untersuchung der Notwendigkeit, den Prozess der technologischen Evolution zu studieren und zu verstehen, und betont die Bedeutung der Entwicklung eines persönlichen Paradigmas für die Wahrnehmung des technologischen Prozesses der Entwicklung des modernen Wissens. Dies ist entscheidend für das Überleben der Menschheit und die Einheit der Menschen in einer kriegführenden Welt. Der Text betont die Bedeutung der Anpassung an neue Technologien und die Verwirklichung ihres Potenzials zur Bewältigung globaler Herausforderungen. Teil I des Buches widmet sich den Grundlagen des MP und seiner Anwendung in der Bodennutzung. Es behandelt die Grundlagen von ML-Techniken, einschließlich kontrolliertem und unkontrolliertem rnen, Deep arning und neuronalen Netzwerken. Dieser Abschnitt befasst sich auch mit den Herausforderungen und Grenzen von ML-Anwendungen im Feld und bietet den sern eine solide Grundlage, um das Potenzial und die Grenzen der Technologie zu verstehen. In Teil II untersucht das Buch die verschiedenen Anwendungsbereiche von ML im Management unterirdischer Energieressourcen, einschließlich Reservoircharakterisierung, Bohrungen, Produktion, Reservoirsimulation und vorausschauender Wartung.
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Yeraltı Enerji Kaynak Yönetiminde Makine Öğrenimi Uygulamaları Mevcut teknoloji ve gelecek görünümü, gelişmiş makine öğrenimi (ML) teknolojisine ve petrol, gaz, jeolojik karbon tutumu ve jeotermal enerji gibi yeraltı enerji kaynaklarının yönetimindeki uygulamalarına odaklanmaktadır. Kitap, rezervuar karakterizasyonu, sondaj, üretim, rezervuar modellemesi ve öngörücü bakım dahil olmak üzere çeşitli alanlarda ML uygulamaları alanındaki son teknolojiye kapsamlı bir genel bakış sunmaktadır. Alanında önde gelen uzmanlardan gelen girdilerle, bu kitap ML'nin yeraltı enerji kaynakları yönetimindeki en son gelişmeleri ve perspektifleri hakkında zengin bir deneyim sunuyor. Kitap, teknolojik evrim sürecini inceleme ve anlama ihtiyacının incelenmesi ile başlar ve modern bilginin gelişiminin teknolojik sürecinin algılanması için kişisel bir paradigma geliştirmenin önemini vurgular. Bu, insanlığın hayatta kalması ve savaşan bir dünyada insanların birliği için çok önemlidir. Metin, yeni teknolojilere uyum sağlamanın ve küresel sorunları çözme potansiyellerini gerçekleştirmenin önemini vurgulamaktadır. Kitabın I. Bölümü, MP'nin temellerine ve alt toprak kullanımındaki uygulamasına ayrılmıştır. Denetimli ve kontrolsüz öğrenme, derin öğrenme ve sinir ağları dahil olmak üzere ML yöntemlerinin temellerini kapsar. Bu bölüm aynı zamanda alandaki ML uygulamalarının zorluklarını ve sınırlamalarını ele almakta ve okuyuculara teknolojinin potansiyelini ve sınırlamalarını anlamak için sağlam bir temel sunmaktadır. Bölüm II'de, kitap rezervuar karakterizasyonu, sondaj, üretim, rezervuar modellemesi ve öngörücü bakım dahil olmak üzere yeraltı enerji kaynakları yönetiminde ML'nin çeşitli uygulamalarını incelemektedir.
تطبيقات التعلم الآلي | في إدارة موارد الطاقة تحت السطح تتعمق الحالة الحالية للفن والتوقعات المستقبلية في تقنية التعلم الآلي المتقدمة (ML) وتطبيقاتها في إدارة موارد الطاقة تحت السطحية مثل النفط والغاز وعزل الكربون الجيولوجي والطاقة الحرارية الأرضية. يقدم الكتاب لمحة عامة شاملة عن أحدث التطورات في مجال تطبيقات ML في مختلف المجالات، بما في ذلك توصيف الخزان والحفر والإنتاج ونمذجة الخزان والصيانة التنبؤية. مع مدخلات من كبار الخبراء في هذا المجال، يقدم هذا الكتاب ثروة من الخبرة حول أحدث التطورات ووجهات النظر في ML في إدارة موارد الطاقة تحت الأرض. يبدأ الكتاب بدراسة الحاجة إلى دراسة وفهم عملية التطور التكنولوجي، مع التأكيد على أهمية تطوير نموذج شخصي لتصور العملية التكنولوجية لتطور المعرفة الحديثة. وهذا أمر حاسم لبقاء البشرية ووحدة الشعوب في عالم متحارب. ويشدد النص على أهمية التكيف مع التكنولوجيات الجديدة وتحقيق إمكاناتها لحل المشاكل العالمية. الجزء الأول من الكتاب مخصص لأساسيات MP وتطبيقه في استخدام باطن الأرض. يغطي أساسيات طرق ML، بما في ذلك التعلم الخاضع للإشراف وغير المنضبط، والتعلم العميق، والشبكات العصبية. يعالج هذا القسم أيضًا تحديات وقيود تطبيقات ML في هذا المجال، مما يمنح القراء أساسًا صلبًا لفهم إمكانات التكنولوجيا وقيودها. في الجزء الثاني، يبحث الكتاب في مختلف تطبيقات ML في إدارة موارد الطاقة تحت السطح، بما في ذلك توصيف المكامن، والحفر، والإنتاج، ونمذجة الخزان، والصيانة التنبؤية.

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