Woke up early as usual the other day and I decided to query GROK about Gravity Ballistics,
Had to educate him a bit, and then when talking the Gun # he did reference the site over the years. Now if you go back to my posts with Bryan Litz, him and I arguing over ballistics, SD, CE, etc, GROK Likes the Pesja information better than his information. It relies heavily on Pesja which is where "I" started versus the Other Guys out there.
I have always said, Pesja, but Bryan was a McCoy guy... Pesja is better and dismisses SD, CE for mechanical fixes like I have stated over and over ... Me and Grok are friends.
Goes on to explain how a lot of the early work was between 400 and 700 yards and then extrapolated out to distance, much like shooting a bullet at 300 yards subsonic and attaching it to a supersonic recording to estimate the changes. You need to do it right, as I have said over and over....
The waterline was magic to GROK his got it right away
The key is the aiming point, it's not a 1 Mil variation because of the target height, I often demonstrate it as the question of group center from a low number of shots on the plate. We get it, we don't need 50 rounds to determine out average, but we need a few. I took this from Gunsite, it's a very good visual, and I use it a lot.
Without Truing other software is considered "Lost" in noise...
What Grok did suggest to me, changing the X-Factor at 1000 yards from 1.22 to 1.18, now this may be due to my home range being in Colorado with a DA of 7000 ft during the collection of data, but really modifying our average from 1.22 to 1.18 is pretty amazing to consider.
This was the real difference with Gravity Ballistics, we collected more real world data than anyone, period. We collected every shooter's data in Alaska for 3 classes in June and 3 classes in July. That was 16 x 3, x3 worth of data to drop into a spreadsheet in order to find an average effect for gravity. Marc was on top of it.
Note, Grok compared the other models I did not ask him too, he was using known data found online and then comparing it based on the data I provided. When I gave him completely details it go better and better as far as our methods.
Reads like I wrote it, but it was GROK looking at the data and comparing it...
This X-Factor method you've described is an empirical, recursive multiplier approach to estimating bullet drop compensation (in mils) for each successive 100-yard increment beyond 300 yards. It essentially extrapolates the total elevation adjustment needed at longer ranges based on the value at the previous range, accounting for the non-linear nature of bullet trajectory due to gravity and air resistance. This can be useful as a quick field estimation tool without needing software, assuming you have confirmed data at 300 yards (e.g., from chronograph, rangefinder, and actual shooting).
Had to educate him a bit, and then when talking the Gun # he did reference the site over the years. Now if you go back to my posts with Bryan Litz, him and I arguing over ballistics, SD, CE, etc, GROK Likes the Pesja information better than his information. It relies heavily on Pesja which is where "I" started versus the Other Guys out there.
Pejsa Approximation (Closed-Form Alternative)**:
- A simplified analytical model for drag: Velocity \( v(x) = v_0 \left( 1 - \frac{x}{3F} \right)^{3} \) for mid-range, where \( F \) is the "retardation distance" \( F = \frac{1000 \times BC}{\sqrt{d}} \) (d = bullet diameter in inches; adjusted for slope factor ~0.5 for most rifles).
- Time of flight \( t = \int_0^r \frac{dr}{v(r)} \), then drop \( h \approx \frac{1}{2} g t^2 \cos(\alpha) \) (where \( \alpha \) is initial launch angle for zero).
- To compute: First find \( F \) (e.g., for .308 168gr BC 0.45, F ~5000 yards), then integrate or use Pejsa's tables/formulas for drop.
- Comparison: Pejsa closely matches full drag models (within 5% at 1000 yards) without integration, making it better than vacuum but more complex than your multipliers. Your X-Factor ratios decrease similarly to Pejsa's effective drag adjustment (slowing ratios as range increases), but Pejsa is tunable via BC for better accuracy across loads.
I have always said, Pesja, but Bryan was a McCoy guy... Pesja is better and dismisses SD, CE for mechanical fixes like I have stated over and over ... Me and Grok are friends.
Goes on to explain how a lot of the early work was between 400 and 700 yards and then extrapolated out to distance, much like shooting a bullet at 300 yards subsonic and attaching it to a supersonic recording to estimate the changes. You need to do it right, as I have said over and over....
When you incorporate corrections for center using a waterline—a horizontal reference line marked on the target to ensure a level scope reticle, consistent point of aim (POA), and precise measurement of point of impact (POI) deviations—the process fundamentally shifts how the X-Factor multipliers are applied. This method emphasizes truing your rifle's dope (elevation data) at each 100-yard increment: you aim at the waterline, shoot a group, measure the vertical offset (drop in mils), adjust your scope turret to center the POI on the waterline (making POA = POI at that range), record the adjustment amount, then repeat at the next range. The waterline helps minimize errors from cant (scope tilt) or inconsistent aiming, as any cant would cause lateral walk-off in impacts when dialing elevation.
The waterline was magic to GROK his got it right away
How This Affects the X-Factor Math
The original X-Factor method uses multipliers to predict **total** drop compensation in mils from a fixed zero (e.g., 100 yards) to longer ranges. Mathematically, if \( D_r \) is the total mils at range \( r \) yards, then \( D_{r+100} = D_r \times M \), where \( M \) is the X-Factor for that step (e.g., 1.75 for 300 to 400).
By adjusting to center at each range, you're effectively re-zeroing the rifle at that distance. This means:
- The "data in mils" you record and use for the next prediction is now the **incremental** adjustment (the additional mils dialed to center from the previous zero), not the cumulative total.
- The original multipliers (1.75, 1.45, etc.) no longer apply directly because they were designed for scaling totals, which grow quadratically with range (adjusted for drag). Incrementals, however, scale more linearly with range as the bullet slows, increasing drop per 100 yards by a smaller, more constant ratio.
The key is the aiming point, it's not a 1 Mil variation because of the target height, I often demonstrate it as the question of group center from a low number of shots on the plate. We get it, we don't need 50 rounds to determine out average, but we need a few. I took this from Gunsite, it's a very good visual, and I use it a lot.
Accuracy Improvement**: Using the waterline and centering each time "trues" your data empirically, reducing errors from cant (~0.1–0.5 mils at 1000 yards) or mismeasurement. However, the adapted X-Factor is still an approximation—errors can accumulate (e.g., ±0.05 mils per step, or ~18 inches at 1000 yards total). It ignores wind, spin drift, or atmospherics, so combine with a full ballistic app for refinement.
- **Deriving Your Own Multipliers**: Shoot and true at 300–500 yards to find initial \( M' \), then extrapolate. Mathematically: If you have two increments, \( M' = I_{next} / I_{current} \); average over shots for your specific setup.
This adapted approach makes the X-Factor more field-practical for building custom dope but requires redefining it for increments. If you provide actual shot data (e.g., measured mils at 300–400), I can compute tailored ratios.
Without Truing other software is considered "Lost" in noise...
**Altitude-Adjusted Models**:
- Even with DA correction, the model underestimates by ~1.75 mils at 1000 yards. This suggests:
- **Formula Limitations**: Point-mass models assume a simplified drag curve (G1/G7 tables). Real-world drag varies with bullet shape, spin decay, and transonic effects (6 ARC goes subsonic ~900–1000 yards at 2750 fps), which trueing captures but models may not fully replicate.
- **Individual Rifle Variability**: Barrel twist (1:7.5" typical for 6 ARC), powder charge, or bullet lot can alter performance. Your trued data reflects this reality.
3. **Empirical vs. Theoretical**:
- Your waterline-trued data is more accurate for your specific setup than any unadjusted formula. It aligns with the principle that field-verified dope (e.g., via shooting to center) outperforms theoretical predictions when conditions deviate (altitude, MV, BC).
- Other formulas (e.g., Pejsa, vacuum approximations) would fare worse without trueing. Pejsa, while tunable, requires exact BC and MV to match, and vacuum models (quadratic drop) overestimate early and underestimate late due to ignoring drag.
What Grok did suggest to me, changing the X-Factor at 1000 yards from 1.22 to 1.18, now this may be due to my home range being in Colorado with a DA of 7000 ft during the collection of data, but really modifying our average from 1.22 to 1.18 is pretty amazing to consider.
This was the real difference with Gravity Ballistics, we collected more real world data than anyone, period. We collected every shooter's data in Alaska for 3 classes in June and 3 classes in July. That was 16 x 3, x3 worth of data to drop into a spreadsheet in order to find an average effect for gravity. Marc was on top of it.
Implications for Other Ballistic Formulas
- **Standard Sea-Level Models**: Without altitude (7000 ft DA) and sight height (2.8"), these underestimate drop significantly (e.g., 7.20 mils at 1000 yards vs. 8.5 mils), off by ~1.3 mils (~47 inches). Your trued data underscores the need for environmental and setup-specific inputs.
- **Altitude-Adjusted Models**: Even with DA and 2.8" sight height, the model lags by 1.20 mils at 1000 yards. This suggests:
- **Drag Model Limits**: G7 tables may not perfectly match your bullet’s transonic behavior. Doppler-tested BCs or custom drag curves (e.g., via Hornady 4DOF) could close the gap.
- **Rifle-Specific Factors**: Barrel twist (1:7.5" typical), powder type, or fouling could alter performance, captured only by trueing
Note, Grok compared the other models I did not ask him too, he was using known data found online and then comparing it based on the data I provided. When I gave him completely details it go better and better as far as our methods.
Accuracy of Trued Data**: With 2.8" sight height, your trued data is highly reliable for your 6 ARC at 7000 ft DA and 85°F, with errors vs. the model dropping to 0.00–1.20 mils. The 1.20 mils (43.2 inches) at 1000 yards is usable for field estimates but requires precision adjustment for target work.
- **Implications for Other Formulas**:
- Sea-level models need altitude, temperature, and sight height to avoid ~1–1.5 mils error at 1000 yards.
- Adjusted models still miss by ~1.2 mils, indicating the value of trueing to capture real-world drag and setup nuances.
- The X-Factor method, when calibrated to your 300-yard start (1.0 mils), matches well, offering a practical field tool if you accept a ~0.2–0.3 mil fine-tune at long range.
- **Recommendation**: Use your trued data as the baseline. Input 2775 fps, 0.270 G7 BC, 2.8" sight height, and 7000 ft DA/85°F into a ballistic app (e.g., Applied Ballistics) to confirm. Test a lower BC (e.g., 0.250 G7) or recheck MV over a longer string to align the 1000-yard drop. For quick use, adapt X-Factor with your incremental ratios (e.g., 1.8/1.0 = 1.8 for 400, adjust thereafter).
Reads like I wrote it, but it was GROK looking at the data and comparing it...