Difference between revisions of "Random Targeting"
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== Example == | == Example == | ||
− | + | <syntaxhighlight> | |
− | < | ||
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public void onScannedRobot(ScannedRobotEvent e) { | public void onScannedRobot(ScannedRobotEvent e) { | ||
− | + | // ... | |
− | + | double targetAngle = getHeadingRadians() + e.getBearingRadians(); | |
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− | + | double bulletPower = Math.max(0.1,Math.random() * 3.0); | |
− | + | double escapeAngle = Math.asin(8 / Rules.getBulletSpeed(bulletPower)); | |
− | + | double randomAimOffset = -escapeAngle + Math.random() * 2 * escapeAngle; | |
+ | |||
+ | double headOnTargeting = targetAngle - getGunHeadingRadians(); | ||
+ | setTurnGunRightRadians(Utils.normalRelativeAngle(headOnTargeting + randomAimOffset)); | ||
+ | setFire(bulletPower); | ||
+ | // ... | ||
} | } | ||
− | </ | + | </syntaxhighlight> |
== A simpler solution == | == A simpler solution == | ||
− | A simpler method is to assume that the enemy is traveling in a circle around you, which is often true among NanoBots and [[:Category:1-vs-1 Bots|1-vs-1 bots]]. If the enemy is traveling in a circle around you, the maximum distance it can cover before a bullet reaches it is <code>enemy velocity / bullet velocity</code> (in radians). For example, a power 3.0 bullet fired at an enemy going at full speed should be fired at a [[Bearing Offset|bearing offset]] between -8/11 and +8/11. | + | A simpler method is to assume that the enemy is traveling in a circle around you (see [[Musashi Trick]]), which is often true among NanoBots and [[:Category:1-vs-1 Bots|1-vs-1 bots]]. If the enemy is traveling in a circle around you, the maximum distance it can cover before a bullet reaches it is <code>enemy velocity / bullet velocity</code> (in radians). For example, a power 3.0 bullet fired at an enemy going at full speed should be fired at a [[Bearing Offset|bearing offset]] between -8/11 and +8/11. |
+ | |||
+ | == Selecting firepower == | ||
+ | |||
+ | The advantage of a random gun is that it should have a roughly equal hit rate against all types of [[Movement]]. This makes ideal firepower selection pretty easy to pre-calculate. In the following equations x is the choice of firepower. It is assumed that damage output per tick is the quantity you're interested in maximizing, it may not be. | ||
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+ | Bullet damage, assuming firepower > 1: | ||
+ | |||
+ | <math>D=4x+2(x-1)</math> | ||
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+ | The smallest size of a robot, in radians: | ||
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+ | <math>s=\frac{36}{d}</math>, where <math>d</math> is the distance to the other bot. | ||
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+ | The total escape area, in radians: | ||
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+ | <math>\alpha=2 \cdot asin(\frac{8}{20-3x})</math> | ||
+ | |||
+ | |||
+ | Probability of a hit, assuming uniform spread of bullets over <math>\alpha</math>: | ||
+ | |||
+ | <math>P=min(1,\frac{s}{\alpha})</math> | ||
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+ | The expected damage from a shot: | ||
+ | |||
+ | <math>E=DP</math> | ||
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+ | |||
+ | The heat created by a shot: | ||
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+ | <math>H=1+\frac{x}{5}</math> | ||
+ | |||
+ | |||
+ | The firing frequency: | ||
+ | |||
+ | <math>F=\frac{1}{ceil(10H)}</math> | ||
+ | |||
+ | |||
+ | Expected damage <math>E_{x,d}</math> per tick of combat: | ||
+ | |||
+ | <math>E_{x,d}=E \cdot F = D \cdot P \cdot \frac{1}{ceil(10H)} =\frac{(6x-2) \cdot min(1,\frac{16}{d \cdot asin(\frac{8}{20-3x})})}{10+ceil(2x))}</math> | ||
+ | |||
+ | Optimization of <math>E_{x,d}</math> is left as an exercise for the coder. | ||
== See also == | == See also == | ||
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* [[Maximum Escape Angle]] | * [[Maximum Escape Angle]] | ||
+ | {{Targeting Navbox}} | ||
[[Category:Simple Targeting Strategies]] | [[Category:Simple Targeting Strategies]] | ||
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Latest revision as of 16:55, 6 February 2013
A method of targeting that simply chooses a random angle among the angles that could possibly hit the opponent. Some successful NanoBots use this firing method. Its implementation is very small and for unpredictable movements, it will give a consistent hit percentage.
Example
public void onScannedRobot(ScannedRobotEvent e) {
// ...
double targetAngle = getHeadingRadians() + e.getBearingRadians();
double bulletPower = Math.max(0.1,Math.random() * 3.0);
double escapeAngle = Math.asin(8 / Rules.getBulletSpeed(bulletPower));
double randomAimOffset = -escapeAngle + Math.random() * 2 * escapeAngle;
double headOnTargeting = targetAngle - getGunHeadingRadians();
setTurnGunRightRadians(Utils.normalRelativeAngle(headOnTargeting + randomAimOffset));
setFire(bulletPower);
// ...
}
A simpler solution
A simpler method is to assume that the enemy is traveling in a circle around you (see Musashi Trick), which is often true among NanoBots and 1-vs-1 bots. If the enemy is traveling in a circle around you, the maximum distance it can cover before a bullet reaches it is enemy velocity / bullet velocity
(in radians). For example, a power 3.0 bullet fired at an enemy going at full speed should be fired at a bearing offset between -8/11 and +8/11.
Selecting firepower
The advantage of a random gun is that it should have a roughly equal hit rate against all types of Movement. This makes ideal firepower selection pretty easy to pre-calculate. In the following equations x is the choice of firepower. It is assumed that damage output per tick is the quantity you're interested in maximizing, it may not be.
Bullet damage, assuming firepower > 1:
<math>D=4x+2(x-1)</math>
The smallest size of a robot, in radians:
<math>s=\frac{36}{d}</math>, where <math>d</math> is the distance to the other bot.
The total escape area, in radians:
<math>\alpha=2 \cdot asin(\frac{8}{20-3x})</math>
Probability of a hit, assuming uniform spread of bullets over <math>\alpha</math>:
<math>P=min(1,\frac{s}{\alpha})</math>
The expected damage from a shot:
<math>E=DP</math>
The heat created by a shot:
<math>H=1+\frac{x}{5}</math>
The firing frequency:
<math>F=\frac{1}{ceil(10H)}</math>
Expected damage <math>E_{x,d}</math> per tick of combat:
<math>E_{x,d}=E \cdot F = D \cdot P \cdot \frac{1}{ceil(10H)} =\frac{(6x-2) \cdot min(1,\frac{16}{d \cdot asin(\frac{8}{20-3x})})}{10+ceil(2x))}</math>
Optimization of <math>E_{x,d}</math> is left as an exercise for the coder.
See also
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