25
Nov
“In preparing for battle, I have always found that plans are useless, but planning is indispensable.” — Dwight D. Eisenhower
You’ve built the perfect financial model for your next self-storage acquisition. Your Excel spreadsheet shows:
✅ 18.2% IRR
✅ 2.8x equity multiple
✅ $4.2M profit in 5 years
But here’s what your model isn’t telling you:
The brutal truth? Your single-path financial model gives you one possible outcome out of 10,000 potential scenarios.
You’re making a $6.9M investment decision based on a 0.01% probability that everything goes exactly as planned.
For decades, institutional investors have used Monte Carlo simulation to stress-test their assumptions across thousands of scenarios. They don’t ask, “Will this deal return 18%?”
They ask:
“What’s the probability this deal returns at least 15%?” “What’s our downside risk if the market softens?” “Which variables matter most—and which are noise?”
Now, this same institutional-grade tool is transforming how sophisticated self-storage investors underwrite deals.
Instead of building one model with fixed assumptions, Monte Carlo runs your model 1,000-10,000 times, randomly varying your key inputs within realistic ranges:
The output? Not a single IRR number, but a probability distribution:
Now you know: There’s a 78% chance you hit your target return, and a 22% chance you don’t.
That’s decision-making with eyes wide open.
Here’s where Monte Carlo gets powerful: sensitivity analysis on steroids.
Your intuition says, “Rent growth is the biggest driver of returns.”
Monte Carlo reveals the truth:
Translation:
This insight alone is worth $1.8M. You now know where to focus your due diligence, negotiation leverage, and risk mitigation.
Monte Carlo Results (10,000 iterations):
The problem? Aggressive rent growth assumption (5.5% annually) combined with optimistic 24-month stabilization timeline.
Key insight from sensitivity analysis: Exit cap rate and economic occupancy stabilization were driving 73% of variance. Rent growth assumptions were secondary.
Revised strategy:
New Monte Carlo Results:
Outcome: Deal closed at revised terms. Investor sleeps well knowing 82% probability of exceeding 15% IRR target.
Value created by running Monte Carlo: Avoided potential $800K-1.2M loss if original aggressive assumptions failed to materialize.
Traditional approach: Build base case, bull case, bear case (3 scenarios)
Monte Carlo approach: Run 10,000 scenarios and understand probability distribution
Questions answered:
The question: Should we refinance at Year 5 or hold and sell at Year 7?
Monte Carlo simulation models:
Variables: Interest rates (7.5-9.5%), NOI growth (2-6%), exit cap rates (5.75-6.75%)
Output: Probability that Scenario A outperforms Scenario B = 64%
Decision: Refinance in Year 5 (higher probability of superior returns + returns capital to investors earlier)
The question: Should we push rents aggressively (12% annually) or conservatively (8% annually)?
Monte Carlo models churn risk:
Variables: Backfill time (30-90 days), new tenant acquisition cost ($150-400), market absorption rate
Output:
Decision: Start conservative (Year 1-2), then shift aggressive (Year 3+) after building stable tenant base. Monte Carlo shows this hybrid approach optimizes risk-adjusted returns.
Objection #1: “It’s too complicated. I don’t know statistics.”
Reality: Modern tools (Risk Solver, @RISK, Crystal Ball) integrate with Excel. Click buttons, get results. No PhD required.
Objection #2: “It’s overkill for a $6M deal.”
Reality: A 3-point IRR swing on $6M = $580K in value. Is that “overkill”?
Objection #3: “I trust my gut. I’ve been doing this 20 years.”
Reality: Survivorship bias. The investors who failed aren’t here to tell their stories. Monte Carlo reveals risks your gut can’t see.
Objection #4: “Garbage in, garbage out. My assumptions could still be wrong.”
Reality: True! But Monte Carlo tests ranges of assumptions, not single points. Even if your ranges are imperfect, you’re stress-testing realistic scenarios—not betting on perfection.
Amateur investors:
Professional investors:
The difference? About $2.4M per deal (and your reputation as someone who actually understands risk).
This teaser covered one tool (Monte Carlo simulation) that transforms underwriting.
Our newly published article, “The Self-Storage Underwriting Playbook: 15 Financial Modeling Questions Every Serious Investor Must Master,” covers the complete framework:
✅ Economic vs. physical occupancy modeling
✅ REIT overhead traps ($127K-191K in hidden fees)
✅ CapEx budgeting ($15-190/SF ranges)
✅ Exit cap rate scenarios (compression vs. expansion)
✅ Construction loan structures
✅ Seller financing strategies
✅ Portfolio-level return optimization
✅ Software tools (Excel vs. Argus vs. industry platforms)
✅ And yes, Monte Carlo simulation deep-dive
Real examples. Real models. Real results from our $40-57M Florida pipeline.
👉 [Read the Full Playbook Here: https://lnkd.in/eP5iZef5] 👈
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We source off-market opportunities and provide institutional-quality sell-side representation for self-storage facilities across Florida and the Southeast.
Our advantage:
📞 Call:786-676-4937
✉️ Email: scott@skylinepropertyexperts.com
🌐 Web: www.skylinepropertyexperts.com
Before you close your next deal, let us stress-test your underwriting:
✅ Monte Carlo simulation(10,000 scenarios, probability distributions)
✅ Sensitivity analysis(identify which variables drive returns)
✅ Red flag identification(economic occupancy gaps, hidden OPEX, unrealistic assumptions)
✅ Downside protection (negotiate better terms based on our analysis)
Recent results:
First review is complimentary for serious investors.
📞 Call:786-676-4937
✉️ Email: scott@skylinepropertyexperts.com
If you found this valuable:
👍 Like this postto help other investors discover probabilistic underwriting
💬 Comment belowwith your biggest underwriting challenge
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📧 Forward to partners evaluating self-storage deals
Let’s raise the bar for the entire industry—one Monte Carlo simulation at a time.
Option A: Keep using single-path models and hoping everything goes according to plan. (Spoiler: It won’t.)
Option B: Adopt Monte Carlo simulation, understand your probability distribution, and make informed decisions based on risk-adjusted returns.
The difference? About $2.4M per deal (and the confidence that comes from knowing your downside risk).
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Because in self-storage investing, the most dangerous number is the one you’re 100% certain about. 💡
Scott Podvin Managing Director Skyline Property Advisors, LLC | Capital Advisors USA, LLC 📞 786-676-4937 ✉️ scott@skylinepropertyexperts.com
“We don’t just model deals—we stress-test them across 10,000 scenarios so you can invest with confidence, not hope.”
#SelfStorage #MonteCarloSimulation #RiskManagement #FinancialModeling #RealEstateInvesting #ProbabilisticUnderwriting #DueDiligence #CRE #InvestorEducation #AdvancedAnalytics #Florida #InstitutionalQuality #SmartInvesting 📊🎲💼
P.S. – That $9.5M deal we mentioned? The investor ran Monte Carlo after our review and discovered his original model had only a 47% probability of hitting his 16% IRR target. After renegotiating terms, probability jumped to 81%. Same property, same market—just better underwriting.
Don’t leave your returns to chance. Run the numbers. Know the odds. Win the game. 🎯