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Home >Courses >AI-Driven Green Ammonia: Electrolyzer Pathways, Storage Logistics, Carbon Intensity and LCOA

12/02/2025

Registration closes 12/02/2025
Mentor Based

AI-Driven Green Ammonia: Electrolyzer Pathways, Storage Logistics, Carbon Intensity and LCOA

Power-to-Ammonia: Safe, Bankable Pathways from Renewable Electrons to Fields and Fuel Tanks

  • Mode: Virtual / Online
  • Type: Mentor Based
  • Level: Moderate
  • Duration: 3 Days (60-90 Minutes each day)
  • Starts: 2 December 2025
  • Time: 5:30 PM IST

About This Course

This 3-day intensive workshop explores green ammonia as both a fuel and fertilizer, with a focus on electrolytic production pathways, plant integration, and safety. Participants will compare storage and transport options, evaluate end-use in engines, fuel cells, and fertilizers, and understand key LCOA and carbon intensity drivers. Through hands-on Excel modeling, they will build decision-ready LCOA/CI tools to assess the bankability of green ammonia projects.

Aim

To give participants a practical, end-to-end understanding of green ammonia as fuel and fertilizer—covering electrolytic production, safe storage and logistics, and LCOA/CI modeling for bankable project decisions.

Workshop Objectives

  • Understand key electrolytic pathways (PEM/alkaline/SOEC) and their integration with ASU and Haber–Bosch/e-Haber.

  • Size core units (electrolyzers, ASU, synthesis loop, storage) and develop first-cut LCOA estimates.

  • Compare storage, transport, and end-use options for ammonia as fuel and fertilizer.

  • Quantify carbon intensity (CI) and identify main technical and commercial LCOA/CI drivers.

  • Build and test a decision-ready LCOA/CI model to support bankable green ammonia projects.

Workshop Structure

📅 Day 1 – Digital Foundations & Electrolyzer Pathways

  • Digital overview: RE power → PEM/Alkaline/SOEC electrolysis → N₂ from ASU → Haber–Bosch/e-Haber
  • Operational data layer: key process tags, historians/SCADA, data quality for AI/ML
  • AI/ML for electrolyzers: specific energy, stack health, availability, anomaly detection
  • Safety & process monitoring: loop P–T, purge/recycle, NH₃ toxicity, leak detection, area classification
  • Hands-on: Build plant-sizing + LCOA v1 worksheet and define minimal data set for AI models

📅 Day 2 – AI-Enhanced Storage, Transport and End Use

  • Storage systems: pressurized vs refrigerated tanks, boil-off and turnaround with digital monitoring
  • Logistics & routing: truck/rail/ship/pipeline, AI-assisted fleet sizing, scheduling and inventory control
  • End-use as fuel: engines/turbines/fuel cells, NOₓ monitoring, AI-guided combustion and H₂ cracking
  • End-use as fertilizer: conversion to urea/nitrates, agronomic efficiency, digital agriculture links
  • Hands-on: Size hub storage and logistics (fuel hub vs fertilizer plant) and compare rule-based vs AI-optimized dispatch

📅 Day 3 – Carbon Intensity, AI-Driven LCOA and Bankability

  • LCOA drivers: CAPEX/OPEX, utilization, power price, stack replacement, incentives and credits
  • Carbon intensity: CI (kg CO₂e/kg NH₃), grid vs RE profiles, AI-based CI forecasting and scenario analysis
  • Certification & MRV: guarantees of origin, digital MRV systems, AI for data validation and anomaly flags
  • Commercial & risk view: offtake (fuel vs fertilizer), indexation, risk allocation, AI-supported risk assessment
  • Hands-on: Build LCOA v2 with sensitivity and generate an AI-assisted one-page investment memo (CI range, LCOA range, key risks/mitigations)

Who Should Enrol?

  • Professionals in renewable energy, hydrogen, ammonia, and fertilizer industries

  • Chemical, mechanical, energy, and process engineers (plant design, operations, EPC)

  • Project developers, consultants, and investors evaluating green ammonia projects

  • Researchers and postgraduate students in energy systems, climate tech, and process engineering

  • Policy, sustainability, and ESG professionals working on low-carbon fuels and fertilizers

Important Dates

Registration Ends

12/02/2025
IST 4:30 PM

Workshop Dates

12/02/2025 – 12/04/2025
IST 5:30 PM

Workshop Outcomes

  • Understand electrolytic green ammonia production pathways and their safe integration with ASU, Haber–Bosch/e-Haber, and renewables.

  • Evaluate storage and transport options and compare green ammonia end-uses as fuel (engines, turbines, fuel cells) and as fertilizer.

  • Build and refine an Excel-based LCOA and carbon intensity (CI) model with key sensitivities (power price, CF, stack life, incentives).

  • Assess project bankability and prepare a concise investment-style memo highlighting CI, LCOA range, and major risks/mitigations.

Fee Structure

Student

₹1999 | $60

Ph.D. Scholar / Researcher

₹2999 | $70

Academician / Faculty

₹3999 | $80

Industry Professional

₹5999 | $100

What You’ll Gain

  • Live & recorded sessions
  • e-Certificate upon completion
  • Post-workshop query support
  • Hands-on learning experience

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