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The oak tree was a boon companion as humans expanded their
presence across much of the globe. While oak woodlands ("Quercus
"spp.) come today in stunningly diverse forms, the stately dehesas
of Spain and the dramatic oak-dominated ranchlands of California
are working landscapes where cultivation and manipulation for a
couple of millennia have shaped Mediterranean-type ecosystems into
a profoundly modified yet productive environment that is
sought-after by every manner ofspecies.
The grazing of wildlife and livestock in oak woodlands yields a
remarkable plant and animal biodiversity, creating a mosaic of
habitats and visually pleasing savannas. Added products unique to
Spain such as Iberian pigs and cork, and in California multiple
landowner benefits, include valued ecosystem services that allow
owners, visitors, and conservation supporters to experience the
benefits of woodland life. With its 15 chapters a decade in the
making, this handsomely illustrated book covers key topics in oak
woodland policy, ecology, and management in Spain and California,
presenting new research results and reviewing an existing expert
literature."
Recent technological developments in sensors, edge computing,
connectivity, and artificial intelligence (AI) technologies have
accelerated the integration of data analysis based on embedded AI
capabilities into resource-constrained, energy-efficient hardware
devices for processing information at the network edge. Embedded AI
combines embedded machine learning (ML) and deep learning (DL or
spiking neural network (SNN) algorithms on edge devices and
implements edge computing capabilities that enable data processing
and analysis without optimised connectivity and integration,
allowing users to access data from various sources. Embedded AI
efficiently implements edge computing and AI processes on
resource-constrained devices to mitigate downtime and service
latency, and it successfully merges AI processes as a pivotal
component in edge computing and embedded system devices. Embedded
AI also enables users to reduce costs, communication, and
processing time by assembling data and by supporting user
requirements without the need for continuous interaction with
physical locations. This book provides an overview of the latest
research results and activities in industrial embedded AI
technologies and applications, based on close cooperation between
three large-scale ECSEL JU projects, AI4DI, ANDANTE, and TEMPO. The
book’s content targets researchers, designers, developers,
academics, post-graduate students and practitioners seeking recent
research on embedded AI. It combines the latest developments in
embedded AI, addressing methodologies, tools, and techniques to
offer insight into technological trends and their use across
different industries.
The advances in industrial edge artificial intelligence (AI) are
transforming the way industrial equipment and machines interact
with the real world, with other machines and humans during
manufacturing processes. These advances allow Industrial Internet
of Things (IIoT) and edge devices to make decisions during the
manufacturing processes using sensors and actuators data. Digital
transformation is reshaping the manufacturing industry, and
industrial edge AI aims to combine the potential advantages of edge
computing (low latency times, reduced bandwidth, distributed
architecture, improved trustworthiness, etc.) with the benefits of
AI (intelligent processing, predictive solutions, classification,
reasoning, etc.). The industrial environments allow the deployment
of highly distributed intelligent industrial applications in remote
sites that require reliable connectivity over wireless and cellular
connections. Intelligent connectivity combines IIoT,
wireless/cellular and AI technologies to support new autonomous
industrial applications by enabling AI capabilities at the edge and
allowing manufacturing companies to improve operational efficiency
and reduce risks and costs for industrial applications. There are
several critical issues to consider when bringing AI to industrial
IoT applications considering training AI models at the edge, the
deployment of the AI-trained inferencing models on the target
reliable edge hardware platforms and the benchmarking of the
solution compared with other implementations. The next-generation
trustworthy industrial AI systems offer dependability by design,
transparency, explainability, verifiability, and standardised
industrial solutions to be implemented into various applications
across different industrial sectors. New AI techniques like
embedded machine learning (ML) and deep learning (DL) capture edge
data, employ AI models and deploy them to hardware target edge
devices from ultra-low-power microcontrollers to embedded devices,
gateways, and on-premises servers for industrial applications.
These techniques reduce latency, increase scalability, reliability,
and resilience, and optimise wireless connectivity, greatly
expanding IIoT capabilities. This book overviews the latest
research results and activities in industrial artificial
intelligence technologies and applications based on the innovative
research, developments and ideas generated by the ECSEL JU AI4DI,
ANDANTE and TEMPO projects. The authors describe industrial AI's
challenges, the approaches adopted, and the main industrial systems
and applications to give the reader a good insight into the
technical essence of the field. The articles provide insightful
material on industrial AI technologies and applications.
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