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1.20230135553AI-managed additive manufacturing for value chain networks
US 04.05.2023
Int.Class G05B 17/02
GPHYSICS
05CONTROLLING; REGULATING
BCONTROL OR REGULATING SYSTEMS IN GENERAL; FUNCTIONAL ELEMENTS OF SUCH SYSTEMS; MONITORING OR TESTING ARRANGEMENTS FOR SUCH SYSTEMS OR ELEMENTS
17Systems involving the use of models or simulators of said systems
02electric
Appl.No 17942061 Applicant Strong Force VCN Portfolio 2019, LLC Inventor Charles Howard Cella

A distributed manufacturing network information technology system includes a cloud-based additive manufacturing management platform with a user interface, connectivity facilities, data storage facilities, and monitoring facilities. The distributed manufacturing network information technology system includes a set of applications for enabling the additive manufacturing management platform to manage a set of distributed manufacturing network entities. The distributed manufacturing network information technology system includes an artificial intelligence system configured to learn on a training set of outcomes, parameters, and data collected from the distributed manufacturing network entities to optimize manufacturing and value chain workflows.

2.WO/2026/024917SYSTEMS, METHODS, KITS, AND APPARATUSES FOR KNOW YOUR MODEL SYSTEMS IN VALUE CHAIN NETWORKS
WO 29.01.2026
Int.Class G06N 3/08
GPHYSICS
06COMPUTING; CALCULATING OR COUNTING
NCOMPUTING ARRANGEMENTS BASED ON SPECIFIC COMPUTATIONAL MODELS
3Computing arrangements based on biological models
02Neural networks
08Learning methods
Appl.No PCT/US2025/038985 Applicant STRONG FORCE VCN PORTFOLIO 2019, LLC Inventor CELLA, Charles Howard
A value chain network control tower system comprises a processor and memory configured to execute a know your model system that manages the complete lifecycle of Al models in enterprise environments. The know your model system performs model intake and registration actions including model documentation collection, registration procedures, metadata collection, input/output interface standardization, legal and licensing validation checks, and security validation. The system conducts comprehensive model evaluation and risk assessment actions by analyzing foundational properties, task performance, safety and risk management, alignment and compliance characteristics, operational metrics, and tooling transparency capabilities. The know your model system executes model deployment actions through automated environment validation, predeployment approval processes, and controlled production deployment with continuous monitoring.
3.WO/2024/233674SYSTEMS, METHODS, KITS, AND APPARATUSES FOR DIGITAL PRODUCT NETWORKS IN VALUE CHAIN NETWORKS
WO 14.11.2024
Int.Class G06F 15/16
GPHYSICS
06COMPUTING; CALCULATING OR COUNTING
FELECTRIC DIGITAL DATA PROCESSING
15Digital computers in general; Data processing equipment in general
16Combinations of two or more digital computers each having at least an arithmetic unit, a program unit and a register, e.g. for a simultaneous processing of several programs
Appl.No PCT/US2024/028385 Applicant STRONG FORCE VCN PORTFOLIO 2019, LLC Inventor CELLA, Charles H.
A system may include a product-to-product communication module configured to exchange inter-product communications for a plurality of digitally connected products. A system may include a product-to-user communication module configured to exchange product-to-user communications between the plurality of digitally connected products and their respective users. A system may include a product-to-business communication module configured to exchange product-to-user communications between the plurality of digitally connected products and their associated enterprises. A system may include a data processing module configured to process the inter-product communications, product-to-user communications, and the product-to-business communications to determine time-sensitive alerts related to corresponding one of the plurality of digitally connected products. A system may include a graphical user interface (GUI) module configured to generate one or more user interfaces for displaying a time-sensitive alerts.
4.WO/2024/226801SYSTEMS, METHODS, KITS, AND APPARATUSES FOR GENERATIVE ARTIFICIAL INTELLIGENCE, GRAPHICAL NEURAL NETWORKS, TRANSFORMER MODELS, AND CONVERGING TECHNOLOGY STACKS IN VALUE CHAIN NETWORKS
WO 31.10.2024
Int.Class G06F 30/27
GPHYSICS
06COMPUTING; CALCULATING OR COUNTING
FELECTRIC DIGITAL DATA PROCESSING
30Computer-aided design
20Design optimisation, verification or simulation
27using machine learning, e.g. artificial intelligence, neural networks, support vector machines or training a model
Appl.No PCT/US2024/026275 Applicant STRONG FORCE VCN PORTFOLIO 2019, LLC Inventor CELLA, Charles H.
A system may execute, by a generative artificial intelligence system, generative artificial intelligence algorithms trained on value chain network data. A system may receive input data including at least one of images, video, audio, text, programmatic code, and data, process the input data using the generative artificial intelligence algorithms to generate output content, wherein the output content includes at least one of structured prose, images, video, audio content, software source code, formatted data, algorithms, definitions, and context-specific structures, and generate an internal state of the generative artificial intelligence system, including a set of weights and/or biases as a result of prior processing. A system may provide the generated output content to a user interface for presentation to a user.
5.2024220201SYSTEMS, METHODS, KITS, AND APPARATUSES FOR DIGITAL PRODUCT NETWORKS IN VALUE CHAIN NETWORKS
AU 21.11.2024
Int.Class G06Q 10/06
GPHYSICS
06COMPUTING; CALCULATING OR COUNTING
QINFORMATION AND COMMUNICATION TECHNOLOGY SPECIALLY ADAPTED FOR ADMINISTRATIVE, COMMERCIAL, FINANCIAL, MANAGERIAL OR SUPERVISORY PURPOSES; SYSTEMS OR METHODS SPECIALLY ADAPTED FOR ADMINISTRATIVE, COMMERCIAL, FINANCIAL, MANAGERIAL OR SUPERVISORY PURPOSES, NOT OTHERWISE PROVIDED FOR
10Administration; Management
06Resources, workflows, human or project management; Enterprise or organisation planning; Enterprise or organisation modelling
Appl.No 2024220201 Applicant STRONG FORCE VCN PORTFOLIO 2019, LLC Inventor CELLA, Charles H.
A system may include a product-to-product communication module configured to exchange inter-product communications for a plurality of digitally connected products. A system may include a product-to-user communication module configured to exchange product-to-user communications between the plurality of digitally connected products and their respective users. A system may include a product-to-business communication module configured to exchange product-to-user communications between the plurality of digitally connected products and their associated enterprises. A system may include a data processing module configured to process the inter-product communications, product-to-user communications, and the product-to-business communications to determine time-sensitive alerts related to corresponding one of the plurality of digitally connected products. A system may include a graphical user interface (GUI) module configured to generate one or more user interfaces for displaying a time-sensitive alerts.
6.2024220200SYSTEMS, METHODS, KITS, AND APPARATUSES FOR GENERATIVE ARTIFICIAL INTELLIGENCE, GRAPHICAL NEURAL NETWORKS, TRANSFORMER MODELS, AND CONVERGING TECHNOLOGY STACKS IN VALUE CHAIN NETWORKS.
AU 21.11.2024
Int.Class G06N 20/00
GPHYSICS
06COMPUTING; CALCULATING OR COUNTING
NCOMPUTING ARRANGEMENTS BASED ON SPECIFIC COMPUTATIONAL MODELS
20Machine learning
Appl.No 2024220200 Applicant STRONG FORCE VCN PORTFOLIO 2019, LLC Inventor BUNIN, Andrew
A system may execute, by a generative artificial intelligence system, generative artificial intelligence algorithms trained on value chain network data. A system may receive input data including at least one of images, video, audio, text, programmatic code, and data, process the input data using the generative artificial intelligence algorithms to generate output content, wherein the output content includes at least one of structured prose, images, video, audio content, software source code, formatted data, algorithms, definitions, and context-specific structures, and generate an internal state of the generative artificial intelligence system, including a set of weights and/or biases as a result of prior processing. A system may provide the generated output content to a user interface for presentation to a user.
7.20240144103Value chain network planning using machine learning and digital twin simulation
US 02.05.2024
Int.Class G05D 1/00
GPHYSICS
05CONTROLLING; REGULATING
DSYSTEMS FOR CONTROLLING OR REGULATING NON-ELECTRIC VARIABLES
1Control of position, course, altitude or attitude of land, water, air or space vehicles, e.g. using automatic pilots
Appl.No 18525831 Applicant Strong Force VCN Portfolio 2019, LLC Inventor Charles H. Cella

A VCN process may receive, by a value chain network digital twin, information associated with a value chain network. A VCN process may provide the information to a set of Artificial Intelligence (AI)-based learning models, wherein at least one member of the set of AI-based learning models is trained to classify at least one of: an operating state, a fault condition, an operating flow, or a behavior of the value chain network and at least one member of the set of AI-based learning models is trained to determine a task to be completed for the value chain network. A VCN process may provide at least one of an instruction for executing the task in the value chain network digital twin and a recommendation for executing the task in the value chain network digital twin.

8.20240144011SYSTEMS, METHODS, KITS, AND APPARATUSES FOR USING ARTIFICIAL INTELLIGENCE FOR INSTRUCTING SMART MACHINES IN VALUE CHAIN NETWORKS
US 02.05.2024
Int.Class G06N 3/08
GPHYSICS
06COMPUTING; CALCULATING OR COUNTING
NCOMPUTING ARRANGEMENTS BASED ON SPECIFIC COMPUTATIONAL MODELS
3Computing arrangements based on biological models
02Neural networks
08Learning methods
Appl.No 18525824 Applicant Strong Force VCN Portfolio 2019, LLC Inventor Charles H. Cella

A VCN process may receive information associated with a value chain network. A VCN process may provide the information to a set of Artificial Intelligence (AI)-based learning models, wherein at least one member of the set of AI-based learning models is trained to classify at least one of: an operating state, a fault condition, an operating flow, or a behavior of the value chain network and at least one member of the set of AI-based learning models is trained on the training data set to determine, upon receiving the classification of the at least one of: the operating state, the fault condition, the operating flow, or the behavior, a task to be completed for the value chain network. A VCN process may provide a computer code instruction set to a machine to execute the task to facilitate an improvement in the operation of the value chain network.

9.2024220202SYSTEMS, METHODS, KITS, AND APPARATUSES FOR SPECIALIZED CHIPS FOR ROBOTIC INTELLIGENCE LAYERS
AU 13.03.2025
Int.Class G05D 101/15
GPHYSICS
05CONTROLLING; REGULATING
DSYSTEMS FOR CONTROLLING OR REGULATING NON-ELECTRIC VARIABLES
101Details of software or hardware architectures used for the control of position
10using artificial intelligence techniques
15using machine learning, e.g. neural networks
Appl.No 2024220202 Applicant STRONG FORCE VCN PORTFOLIO 2019, LLC Inventor BLIVEN, Brent
A system may include a robotic control circuit configured to control one or more robotic functions of a robot. A system may include a plurality of sensors configured to collect data. A system may include a governance analysis circuit configured to analyze the data and select one or more governance frameworks based on the analyzed data. A system may include a governance model circuit configured to generate a model that applies the one or more governance frameworks to determine one or more governance actions, wherein the robotic control circuit is configured to control the one or more robotic functions in accordance with the one or more governance actions, wherein the robotic control circuit, the governance analysis circuit, and the governance model circuit are integrated on a single substrate.
10.WO/2026/024858CONFIGURED ARTIFICIAL INTELLIGENCE SYSTEMS AND METHODS FOR SOFTWARE-DEFINED VEHICLES
WO 29.01.2026
Int.Class G05D 1/22
GPHYSICS
05CONTROLLING; REGULATING
DSYSTEMS FOR CONTROLLING OR REGULATING NON-ELECTRIC VARIABLES
1Control of position, course, altitude or attitude of land, water, air or space vehicles, e.g. using automatic pilots
20Control system inputs
22Command input arrangements
Appl.No PCT/US2025/038888 Applicant STRONG FORCE TP PORTFOLIO 2022, LLC Inventor CELLA, Charles Howard
The present disclosure relates to configured artificial intelligence methods and systems and related transportation systems and methods, including software-defined vehicles, for transportation systems using sensor and other data, and the integration of a transportation system with an AI convergence system of systems, providing a multi-layered system for intelligent automation and data-driven decision making across operational aspects of a transportation system.