Category: Senza categoria

Artificial intelligence and digital reproduction in art

Authors: Salvatore Lorusso, Lucio Colizzi, Tommaso Adamo

Abstract
The growing presence of artificial intelligence (AI) in the management of civil and social life as well as in economic and political organization has led to a debate on AI involved in various scientific, philosophical, legal and moral questions, including cultural ones. In this paper, after a brief presentation of the application of AI in art and culture, we focus on art production using AI and the digital reproduction of art which temporally precedes that of AI-generated art. The very idea of artistic beauty emanating from works of art produced with AI is consequently questioned, giving rise to a new creativity that is to be added to the human creativity of an artist’s products. Lastly, the possibility is raised that specific generative algorithms may contribute to the resolution of the topical debate on the issue of attribution and authentication of works of art.

https://doi.org/10.6092/issn.1973-9494/20036

Next-Gen Smart Farming: Integrating AI, IoT, Digital Twin, and Robotics for Cyber-Physical Systems

Chapter 2 – Sensing and architecture of an agricultural cyber-physical system

Tommaso Adamo, Lucio Colizzi, Emanuela Guerriero, Shimon Y. Nof, Puwadol Oak Dusadeerungsikul

Abstract
This chapter explores the foundations of cyber-physical systems (CPS) and digital twins (DTs) applied to agriculture. It introduces a layered architecture composed of Internet of Things (IoT) nodes, backend services, databases, and application interfaces, emphasizing the complementarity between CPS and DT concepts. Core communication paradigms, publish–subscribe, push–pull, exclusive pair, and request–response, are presented and compared, showing their relevance in agricultural contexts. A didactic case study of a greenhouse with six irrigation lines illustrates the design of IoT sensor and actuator nodes, middleware, decision support systems, and a 3D DT implemented in FlexSim. The chapter is addressed both to domain experts, who need to understand the inherent complexity of such systems, and to developers, who can find practical insights for implementation. It concludes by highlighting the bidirectional nature of DTs, where physical events are mirrored in the virtual model and user actions in the digital space affect the real environment.

https://doi.org/10.1016/B978-0-443-43918-6.00007-6

 

Chapter 4 – Decision-making in smart agriculture: Advanced models and techniques

Tommaso Adamo, Lucio Colizzi, Emanuela Guerriero

Abstract
This chapter addresses one of the core challenges in smart agriculture: how to support complex, real-time decision-making processes through advanced computational paradigms. As agriculture evolves into a data-intensive domain, driven by artificial intelligence, Internet of Things, and cloud-based analytics, traditional decision support tools are no longer sufficient to manage the increasing complexity and dynamism of agronomic systems. Smart farming demands models that can capture biodiversity optimization, real-time fertigation strategies, and efficient use of limited resources. We illustrate a robust solution approach based on a model-and-run paradigm, centered on the separation between problem modeling and problem solving. We distinguish between two prominent model-and-run frameworks: Constraint programming (CP) and mathematical programming (MP), comparing their strengths, inference methods, and application domains. The chapter is structured around two real-world smart farming decision problems. Section 4.2 focuses on optimizing crop planting layout to maximize biodiversity using CP. Section 4.3 tackles fertigation and irrigation scheduling under a data-driven, sequential decision-making perspective using integer linear programming (ILP). Each section outlines the decision problem, provides its formal encoding and notation, and develops the computational model. To demonstrate the practical relevance of these models, both approaches have been deployed within a microservices-based architecture composed of a database, a front-end application, and two back-end services, invoking respectively a CP solver and an ILP solver. This architecture exemplifies how decision modeling techniques can transition from research to operational deployment, enabling next-generation digital agriculture systems.

https://doi.org/10.1016/B978-0-443-43918-6.00005-2