Introduction to Adjustment Theory
Introduction
🧭 Overview
🧠 One-sentence thesis
Measurements are inherently uncertain due to fundamental and practical limitations, so the calculus of observations provides methods to describe, analyze, and adjust measurement data to obtain consistent and sufficiently accurate results for a given purpose.
📌 Key points (3–5)
- Why measurements are uncertain: mathematical models are abstractions; real-world conditions are uncontrollable; improved instruments only shift uncertainty to another level; and absolute certainty is often unnecessary and too costly.
- What the calculus of observations does: describes and analyzes measurement processes, provides computational methods to handle uncertainty, describes quality of results, and guides optimal measurement design.
- Two essential models: the functional model (mathematical rules describing relationships, e.g., Euclidean geometry) and the stochastic model (statistical description of measurement variability, e.g., normal distribution).
- Common confusion: measurements vs. mathematical certainty—measurements deal with physical reality and always have uncertainty, whereas mathematical certainty applies only to abstract logical statements.
- Why adjustment is needed: redundant observations usually violate mathematical rules (e.g., triangle angles not summing to π), so adjustment produces consistent results.
🔍 Why measurements are always uncertain
🔍 Mathematical certainty vs. physical reality
Mathematical certainty pertains to statements like: if a=b and b=c and c=d, then a=d.
- Mathematical certainty applies to abstractions and logical statements, not to physical measurements.
- Example: If a, b, c, and d are measured terrain distances, a surveyor will compare d with a before stating a=d, because measurements involve humans, instruments, and material conditions that do not always follow logic.
- Don't confuse: a mathematical model can usefully describe the real world, but there is always an essential difference between the model and reality.
🌍 Four fundamental reasons for uncertainty
- Abstraction gap: mathematical models describe abstractions, not physical/technical/social matters directly.
- Uncontrollable conditions: laboratory conditions can be partly controlled, but natural conditions are uncontrollable and only partly describable.
- Persistent uncertainty: improved methods and instruments reduce uncertainty but do not eliminate it—uncertainty simply shifts to another level.
- Purpose-driven tolerance: measurements serve a purpose; some uncertainty is acceptable, and better instruments cost more, so one must balance accuracy against cost.
💡 Practical implication
- Absolute certainty from measurements is fundamentally and practically impossible.
- It is also often not needed: measurements aim to provide information that is accurate enough and cheap enough for a specific purpose.
📐 What the calculus of observations covers
📐 Four main tasks
The calculus of observations (waarnemingsrekening) is the part of mathematical statistics dealing with measurement results. It addresses:
- Description and analysis of measurement processes.
- Computational methods that account for uncertainty in measurements.
- Quality description of measurements and derived results.
- Design guidelines for measurement setups to achieve optimal procedures.
🔧 Typical surveying problems
The excerpt illustrates with surveying examples:
| Problem | Question |
|---|---|
| Repeatability | Repeating a measurement usually gives different answers—how to describe this? |
| Error detection | Results can be corrupted by systematic or gross errors—can these be traced? |
| Redundancy | Geometric figures are measured with redundant observations (e.g., all three triangle angles instead of two)—how to adjust them to obey mathematical rules? |
| Quality propagation | How does measurement variability affect the final result? Can non-detected gross errors remain? |
- Once these questions are answered, one can determine the required measurement setup from the desired quality of the end product.
- This book focuses mainly on points 1 (description of variability) and 3 (adjustment), the elementary aspects of adjustment theory.
🧩 The functional model
🧩 What a functional model is
The functional model: notions and rules from a mathematical theory used to describe relationships in the problem.
- A mathematical model strips away unnecessary details and describes essential aspects using applicable mathematical theory.
- The model should properly describe the situation without being needlessly complicated.
- Formulating a good model is the "art" of the discipline, involving experience, experiments, intuition, and creativity.
📏 Example: two-dimensional Euclidean geometry
- Scenario: determining the relative position of terrain points (ignoring height differences) over not-too-large distances.
- Functional model choice: project points onto a level surface and treat it as a plane; use two-dimensional Euclidean geometry (e.g., sine and cosine rules).
- Why it works: experience shows this abstraction is valid; terrain points are marked sharply so they can be treated as mathematical points.
- Caution: gratuitous use of a "standard" model can be risky—like laws of nature, a model can only be declared valid on the basis of experiments.
🔗 Link to measurements
- When measuring geometric elements (e.g., an angle α), one assigns a number (the observation) according to certain rules (the measurement procedure) to a mathematical notion.
- The functional model provides the mathematical rules that the measurements should obey (e.g., triangle angles summing to π).
📊 The stochastic model
📊 What a stochastic model is
The stochastic model: notions from mathematical statistics used to describe the inherent variability of measurement processes.
- Repeating a measurement of the same quantity usually gives different answers.
- To describe this phenomenon, one could repeat measurements many times (e.g., 100 times) and repeat the experiment itself.
- If the histograms of each experiment are sufficiently alike (similar shapes, locations not differing much), the measurement variability can be described by a stochastic variable.
🎲 Typical stochastic model in surveying
- Assumption: observations from a certain measurement method can be described as an independent sample drawn from a normal (Gaussian) distribution with a certain standard deviation.
- Mathematical expectation: the expectation of the normally distributed stochastic variable (the observable) equals the unknown quantity (e.g., the true angle).
- Example: If three angles α, β, and γ of a triangle are measured, the expectations of the three angular stochastic variables obey the functional model relation (sum to π), but the individual observations themselves usually do not.
📝 Registration and past experience
- Registration: the measurement result as a number plus additional information (instrument type, procedure, observer, weather, etc.).
- Purpose: establish a link with past experience or experiments to justify the choice of stochastic model.
- In practice, not every measurement is repeated; one relies on extrapolation of past experience.
🔄 Functional and stochastic models together
🔄 The mathematical model
- The functional and stochastic model together form the mathematical model.
- Functional model: describes the mathematical relationships that should hold (e.g., geometric rules).
- Stochastic model: describes the variability and uncertainty in the observations.
🗺️ Diagram of fundamental relations
The excerpt provides a conceptual flow (figure 0.1):
- Terrain situation (real world)
- Functional model (mathematical abstraction)
- Measurement (assigning numbers to quantities)
- Experiment (repeating measurements to observe variability)
- Stochastic model (statistical description of variability)
- This diagram shows how the real-world situation, mathematical rules, and measurement uncertainty are interconnected in adjustment theory.
⚠️ Why adjustment is necessary
- Redundant observations (e.g., measuring all three angles of a triangle instead of two) usually do not obey the functional model's mathematical rules (e.g., the three measured angles do not sum to π).
- Adjustment (vereffening) is needed to obtain consistent results that satisfy the functional model.
- The excerpt asks: what is the best way to perform such an adjustment? This is a central question in adjustment theory.